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@@ -2,8 +2,8 @@
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\label{sec:detailed_execution_model}
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In this section, we describe our execution model and its implications for software design.
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-In Sec.~\ref{sec:system_description}, we introduce target architecture and the reference system used for evaluations.
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-Sec.~\ref{sec:execution_model} presents the proposed execution model, designed based on the key observations from experimental results.
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+Sec.~\ref{sec:system_description} introduces the target architecture and the reference system used for evaluations.
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+In Sec.~\ref{sec:execution_model}, we present the proposed execution model, derived from key observations obtained through experimental results.
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In the following three sections, we discuss how this model affects both the power efficiency and correctness of software design.
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Finally, in Sec.~\ref{sec:other_architectures}, we evaluate the effectiveness of our model across systems with different architectural configurations.
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@@ -22,14 +22,15 @@ The power management system is responsible for accumulating the incoming energy
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The computing system equips NVMs along with the MCU and peripherals, and utilize the NVMs for state retention between power failures.
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This setup includes two notable decoupling capacitors that affect the execution model of intermittent systems.
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-The first one (C1 in the figure) is placed at the power management system as voltage regulators require a capacitor larger than the device-specific minimum capacitance for stable operation.
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-Also, the computing system has its own decoupling capacitor (C2) to stabilize operating voltage.
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+The first one (C1 in the figure) is located within the power management system as voltage regulators require a capacitor larger than the device-specific minimum to ensure stable operation.
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+The second capacitor (C2) is part of the computing system and is used for stabilizing the operating voltage against sudden current draw.
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-Recent studies increasingly explore 32-bit architectures for the computing system~\cite{shihIntermittent2024,wuIntOS2024,kimRapid2024,akhunovEnabling2023,kimLACT2024,kimLivenessAware2023,parkEnergyHarvestingAware2023,kortbeekWARio2022,khanDaCapo2023,barjamiIntermittent2024,songTaDA2024}, as emerging applications on intermittent systems, such as Deep Neural Networks (DNNs)~\cite{houTale2024,yenKeep2023,khanDaCapo2023,gobieskiIntelligence2019,islamEnabling2022,kangMore2022,leeNeuro2019,islamZygarde2020,custodeFastInf2024,barjamiIntermittent2024,songTaDA2024}, demand greater computational capabilities~\cite{bakarProtean2023a,carontiFinegrained2023}.
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-In this context, we employ a custom-built board featuring a 32-bit ARM Cortex-M33 processor (STM32L5, operating at 16Mhz) with 512KB of Ferroelectric RAM (FRAM) as a reference system.
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-A TI BQ25570 based board is used for the power management system, with power-on and off thresholds of 4.9V and 3.4V, respectively.
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+Recent studies have increasingly explored 32-bit architectures for computing systems~\cite{shihIntermittent2024,wuIntOS2024,kimRapid2024,akhunovEnabling2023,kimLACT2024,kimLivenessAware2023,parkEnergyHarvestingAware2023,kortbeekWARio2022,khanDaCapo2023,barjamiIntermittent2024,songTaDA2024}, as emerging applications on intermittent systems, such as Deep Neural Networks (DNNs)~\cite{houTale2024,yenKeep2023,khanDaCapo2023,gobieskiIntelligence2019,islamEnabling2022,kangMore2022,leeNeuro2019,islamZygarde2020,custodeFastInf2024,barjamiIntermittent2024,songTaDA2024}, demand greater computational capabilities~\cite{bakarProtean2023a,carontiFinegrained2023}.
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+In this context, we employ a custom-built board featuring a 32-bit ARM Cortex-M33 processor (STM32L5, operating at 16Mhz) with 512KB of Ferroelectric RAM (FRAM) as our reference system.
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+For the power management system, we use a TI BQ25570-based board with power-on and power-off thresholds of 4.9 V and 3.4 V, respectively.
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+% A TI BQ25570 based board is used for the power management system, with power-on and off thresholds of 4.9V and 3.4V, respectively.
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We empirically select 22uF and 220uF capacitors for C1 and C2, respectively, as these are the minimum capacitor sizes for stable checkpoint and recovery.
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-Sec.~\ref{sec:other_architectures} evaluates generality of our model in different architectures, such as systems with Magnetic RAM (MRAM) and a 16-bit core (e.g., MSP430).
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+Sec.~\ref{sec:other_architectures} evaluates the generality of our model across different architectures, such as systems with Magnetic RAM (MRAM) and a 16-bit core (e.g., MSP430).
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% In this work, our goal is to model the buffering effects of these capacitors and evaluate their implications on software designs.
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% (Recent studies present the need for better computing capability~\cite{bakarProtean2023a})
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@@ -58,19 +59,19 @@ Sec.~\ref{sec:other_architectures} evaluates generality of our model in differen
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\end{figure}
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To derive general execution model with the effects of decoupling capacitors, we first present a sample measurement from our reference system.
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-To generate operation time of 50ms under 1.5mA current supply, we use a 470uF capacitor for energy storage.
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-Fig.~\ref{fig:execution_trace_one_cycle} shows the traces of the energy storage voltage and the MCU operating voltage (Vdd) for one power cycle.
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+To achieve an operation time of 50ms under 1.5mA current supply, we use a 470uF capacitor for energy storage.
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+Fig.~\ref{fig:execution_trace_one_cycle} illustrates the voltage traces of the energy storage and the MCU operating voltage (Vdd) over a single power cycle.
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Note that Vdd is maintained by decoupling capacitors after current supply from the power management system stops.
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-The shaded areas represent the ranges that system executes the application code.
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+The shaded areas represent the periods that system executes the application code.
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% Fig.~\ref{fig:execution_trace_one_cycle} shows the trace during one power cycle, and Fig.~\ref{fig:execution_trace_detailed} presents the first execution cycle in more detail.
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Fig.~\ref{fig:execution_trace_detailed} presents the first execution cycle in more detail. It shows several interesting differences between the traditional execution model and the actual operation.
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-Among them, we highlight three key observations that affect software designer's decision.
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+Among them, we highlight three key observations that affect software design decisions.
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\begin{itemize}
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- \item \textbf{O1}: The capacitor voltage drops quickly to charge decoupling capacitor when the system wakes-up ($t1$--$t2$).
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- \item \textbf{O2}: The system executes at sub-voltage using the decoupling capacitors, even after power supply stops ($t4$--$t5$).
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- \item \textbf{O3}: Decoupling capacitors discharge while the system is powered-off (after $t5$, as shown in Fig.~\ref{fig:execution_trace_one_cycle}).
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+ \item \textbf{O1}: The capacitor voltage drops rapidly to charge decoupling capacitor when the system wakes up ($t1$--$t2$).
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+ \item \textbf{O2}: The system operates at sub-voltage using the decoupling capacitors, even after power supply stops ($t4$--$t5$).
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+ \item \textbf{O3}: Decoupling capacitors discharge while the system is powered off (after $t5$, as shown in Fig.~\ref{fig:execution_trace_one_cycle}).
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\end{itemize}
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\begin{figure}
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@@ -82,23 +83,23 @@ Among them, we highlight three key observations that affect software designer's
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% As we discuss in the following sections, all three observations significantly impact the performance of intermittent system designs.
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% We propose a detailed execution model which reflects these observations.
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-Fig.~\ref{fig:detailed_execution_model} shows our detailed execution model, which reflects these key observations.
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-When the capacitor voltage reaches the power-on threshold, the voltage experience quick drop due to the buffering effects (\circled{1}), instead of gradual reduction.
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-After initialization (\circled{2}), the system starts to execute at normal voltage (\circled{3}), 3.3V for example.
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-When the voltage hits the power-off threshold, the power supply stops but system now starts to execute using the buffered energy (\circled{4}).
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-Since voltage of the decoupling capacitor decreases as it discharges, the system executes at sub-normal voltage until it reaches the voltage it cannot operate (e.g., 2.5V).
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+Fig.~\ref{fig:detailed_execution_model} illustrates our detailed execution model, incorporating these key observations.
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+When the capacitor voltage reaches the power-on threshold, the voltage experience a rapid drop due to the buffering effects (\circled{1}), instead of gradual decline.
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+After initialization (\circled{2}), the system begins execution at normal operating voltage (\circled{3}), 3.3V for example.
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+When the voltage hits the power-off threshold, the power supply stops but system now starts to operate using the buffered energy (\circled{4}).
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+Since the voltage of the decoupling capacitor decreases as it discharges, the system executes at sub-normal voltage until it reaches the voltage it cannot operate (e.g., 2.5V).
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% This voltage is known as Brown-Out Reset (BOR) voltage and is typically in a range of 1.7V to 2.5V in modern MCUs~\cite{}.
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-Finally, until the next power-on, the remaining energy in decoupling capacitors continues to discharge (\circled{5}).
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+Finally, until the next power-on event, the remaining energy in decoupling capacitors continues to discharge (\circled{5}).
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-When designing intermittent systems, especially targeting small capacitors, it is important for software designers to understand this model.
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-In the following sections, we discuss the impact of this model to software design in more detail.
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+When designing intermittent systems, particularly those utilizing small capacitors, it is important for software designers to have clear understanding of this model.
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+In the following sections, we discuss the impact of our model to software design in more detail.
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\subsection{Impact on Power Efficiency}
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\label{sec:power_efficiency}
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The traditional model implies that the energy consumed between power-on and power-off thresholds are entirely used in the computing system.
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However, our model reveals that considerable energy is used for charging the decoupling capacitors (\textbf{O1}) and dissipated during power-off durations (\textbf{O3}).
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-This implies that much smaller energy may be used for the useful computation compared to the designer's expectation.
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+This indicates that much smaller energy may be used for the useful computation compared to the designer's expectation.
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\begin{figure}
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\centering
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@@ -107,17 +108,19 @@ This implies that much smaller energy may be used for the useful computation com
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\label{fig:power_distribution}
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\end{figure}
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-Fig.~\ref{fig:power_distribution} shows the distribution of the energy consumed for each stage of operation within one power cycle, averaged over 50 executions, where 1mA of input current is provided at 1.9V.
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-The x-axis represents different capacitor sizes and the line in the secondary axis represents the average operation times for application code.
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+Fig.~\ref{fig:power_distribution} shows the distribution of the energy consumption for each stage of operation within one power cycle, averaged over 50 executions, where 1mA of input current is provided at 1.9V.
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+The x-axis represents capacitor sizes and the line in the secondary axis represents the average operation times for application code.
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The checkpoint is executed by the interrupt from the power management system~\cite{}, which is generated when the capacitor voltage reaches the power-off threshold (3.4V).
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Note that this is the most efficient point for checkpoint execution according to the traditional model.
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The results shows that significant energy is wasted in the decoupling capacitors.
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For example, 60.7\% of power is wasted during the power-off duration (denoted as \emph{Dischrged}) in 470uF case.
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-The discharging behavior can be modeled as RC-discharging circuit (i.e., $q=CVe^{-\frac{1}{RC}t}$), which has exponential discharge rate.
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-As a result, the cost from discharging is more expensive when the capacitor size is small;
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-in our case, 50\% of energy is discharged at the first 161 ms.
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-The discharge rate decreases as the capacitor size increases, down to 28.5\% in 1320uF case, which is still not negligible.
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+The discharging behavior can be modeled as an RC-discharging circuit (i.e., $q=CVe^{-\frac{1}{RC}t}$), which exhibits an exponential discharge rate.
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+As a result, the energy loss due to discharging is more expensive when the capacitor size is small.
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+In our case, 50\% of energy is discharged within the first 161 ms.
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+While the discharge rate decreases with larger capacitor sizes, it remains significant;
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+for example, in the 1320uF case, 28.5\% of energy is discharged, which is still non-negligible.
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+% The discharge rate decreases as the capacitor size increases, down to 28.5\% in 1320uF case, which is still not negligible.
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% The cost is more expensive when the capacitor size is small since the discharge rate follows the RC-discharging circuits.
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% While using smaller capacitors shortens the power-off durations, the discharging behavior penalizes them most since RC-discharging circuits discharge exponentially (in our case, 50\% of energy is discharged at the first 161 ms).
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% As a result, 60.7\% of power is wasted in 470uF, and the rate decreases as the capacitor size increases, down to 28.5\% in 1320uF case.
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@@ -125,10 +128,10 @@ The discharge rate decreases as the capacitor size increases, down to 28.5\% in
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Another important observation is the error introduced by the traditional model.
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The traditional model expects both the energies, \emph{Execution} and \emph{Discharged}, are used for computation.
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This introduces significant errors, up to 5.62x in 470uF setup.
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-In the same context, the traditional model expects using 470uF capacitor instead of 1320uF results in merely 1.22x overhead in energy efficiency, but the actual energy efficiency differs by 4.71x.
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+In the same context, the traditional model predicts that using a 470uF capacitor instead of a 1320uF would result in only 1.22x overhead in energy efficiency, while the actual difference is 4.71x.
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% However, our model shows that the actual energy efficiency differs by xx\% in reality, brining xx\% error in the traditional model.
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-This can significantly mislead the system designers when they decide the capacitor size by considering tradeoffs between overall efficiency and reactiveness.
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-In Sec.~\ref{sec:design_guidelines}, we discuss options to minimize overhead from discharging when designing software techniques.
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+This can significantly mislead system designers when they select capacitor sizes by considering tradeoffs between overall efficiency and reactiveness.
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+In Sec.~\ref{sec:design_guidelines}, we explore strategies to minimize overhead caused by discharging when designing software techniques.
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% More importantly, this wasted energy is expected to be used for the computation in traditional execution model, as all the energy except for the initialization and checkpoint/recovery is expected to be used in computations.
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% It brings significant errors between the two models in available energy for the execution.
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@@ -141,13 +144,13 @@ In Sec.~\ref{sec:design_guidelines}, we discuss options to minimize overhead fro
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\subsection{Impact on Predicting Power Failures}
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\label{sec:predicting_power_failures}
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-According to the traditional model, the system states should be saved to NVM before power-off threshold, as the system halts at this point.
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-On the other hand, our model shows that the system may operate afterward using the energy stored in the decoupling capacitors (\textbf{O2}).
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-Since modern MCUs can operate on a range of supply voltages (e.g., from 1.7V to 3.6V in STM32L5 and MSP430), the computing system is executed until the voltage of decoupling capacitors reaches the minimum operating voltage.
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+According to the traditional model, system states should be saved to NVM before reaching power-off threshold, as the system halts at this point.
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+On the other hand, our model shows that the system may continue operating using the energy stored in the decoupling capacitors (\textbf{O2}).
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+Since modern MCUs can operate across a wide range of supply voltages (e.g., from 1.7V to 3.6V in STM32L5 and MSP430), the computing system is executed until the voltage of decoupling capacitors drops to the minimum operating level.
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% Modern MCUs can operate on a range of supply voltages (e.g., from 1.7V to 3.6V for STM32L5 and MSP430).
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% Since the voltage of decoupling capacitors decreases as the discharge, the computing system is executed until the voltage reaches the minimum operating voltage.
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% While the voltage of decoupling capacitors decreases as they discharge, the computing system operates since modern MCUs can operate on a range of supply voltages (e.g., from 1.7V to 3.6V for STM32L5 and MSP430).
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-This makes the energy storage voltage not a good estimate of the remaining time that system can execute.
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+This makes the energy storage voltage not a reliable estimate of the remaining execution time.
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\begin{figure}
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\centering
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@@ -168,34 +171,35 @@ This makes the energy storage voltage not a good estimate of the remaining time
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% Modern MCUs can operate on wide range of operating voltages (e.g., from 1.7V to 3.6V for STM32L5 and MSP430).
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-Fig.~\ref{fig:sub_voltage_execution} shows the ratio of the times executed under sub-voltage over the total execution times, averaged over 30 measurements.
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-The x-axis shows the different capacitor sizes and the colors represent the voltages that system stops its operation.
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-We evaluate various voltages ranging from 1.7V to 2.5V since not all components in the computing system may operate at the lowest voltage (Sec.~\ref{sec:sub_normal_execution}).
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-Also, we present two different cases with input current of 1mA (Fig.~\ref{fig:sub_voltage_execution_1mA}) and 3mA (Fig.~\ref{fig:sub_voltage_execution_3mA}) to evaluate the impact of input power.
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+Fig.~\ref{fig:sub_voltage_execution} presents the ratio of the times executed under sub-voltage to the total execution times, averaged over 30 measurements.
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+The x-axis represents different capacitor sizes and the colors indicate the voltage levels at which the system stops operation.
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+We evaluate a range of stop voltages from 1.7V to 2.5V since not all components in the computing system may function at the lowest voltage (Sec.~\ref{sec:sub_normal_execution}).
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+Also, we examine two cases with different input currents of 1mA (Fig.~\ref{fig:sub_voltage_execution_1mA}) and 3mA (Fig.~\ref{fig:sub_voltage_execution_3mA}), to assess the impact of varying input power.
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-The figure shows that significant MCU operation is executed at sub-normal voltage.
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-For example, when 470uF capacitor is used at 1mA input current (Fig.~\ref{fig:sub_voltage_execution_1mA}), 82.8\% of computation is executed \emph{after} power-off threshold.
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-The ratio decreases as the system powers-off early (reduced sub-voltage operation time) or the input current increases (longer operation time at normal voltage).
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+The figure shows that a significant portion of MCU operation occurs at sub-normal voltage.
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+For example, when 470uF capacitor is used at 1mA input current (Fig.~\ref{fig:sub_voltage_execution_1mA}), 82.8\% of computation takes place \emph{after} the power-off threshold.
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+This ratio decreases as the system powers off earlier (reducing sub-voltage operation time) or the input current increases (extending operation time at normal voltage).
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Under 1000uF is the major focus of this paper.
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-These values can be directly translated to the inefficiency of the system based on the traditional model.
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-For example, in 470uF with 1mA input current case, systems executing checkpoint at power-off threshold may operate 16.3ms, although it can operate 29.4ms longer if it execute checkpoint at 2.5V.
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-At next power-on, decoupling capacitors are discharged to similar voltages in either cases, as capacitors discharge exponentially (Sec.~\ref{sec:power_efficiency}).
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-As a result, failing to execute at sub-normal voltage introduces significant power efficiency overhead.
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+These values can be directly translated to the inefficiencies of the system based on the traditional model.
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+For example, in the case of 470uF with 1mA input current, systems executing checkpoint at power-off threshold may operate 16.3ms.
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+However, the system could operate for an additional 29.4ms if the checkpoint is executed at 2.5V.
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+At the next power-on, the decoupling capacitors discharge to similar voltage levels in both cases, as their discharge behavior follows an exponential curve (Sec.~\ref{sec:power_efficiency}).
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+As a result, failing to utilize the available energy at sub-normal voltage introduces significant power efficiency overhead.
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% Although early checkpoint execution may save some energy in decoupling capacitors, the saved energy is not preserved as discussed in Sec.~\ref{sec:power_efficiency}.
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-In Sec.~\ref{sec:design_guidelines}, we validate this aspect and propose a method to predict the power-off time more accurately.
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+In Sec.~\ref{sec:design_guidelines}, we validate this aspect and propose methods to predict the power-off time more accurately.
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\subsection{Impact of Sub-normal Voltage Execution}
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\label{sec:sub_normal_execution}
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-The traditional model makes the software designers assume the system is executed under stable voltage.
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-However, the majority of execution may happen after the power-off threshold at sub-normal voltage (\textbf{O3}), as discussed in Sec.~\ref{sec:predicting_power_failures}.
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-Being aware of this is important to software designers since the peripherals and analog components may function differently at sub-normal voltage.
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+The traditional model leads the software designers to assume that the system is executed under a stable voltage.
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+However, a significant portion of execution may happen after the power-off threshold at sub-normal voltage (\textbf{O3}), as discussed in Sec.~\ref{sec:predicting_power_failures}.
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+Being aware of this is crucial to software designers since the peripherals and analog components may function differently at sub-normal voltage.
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-The two most relevant examples are Analog-Digital Converters (ADCs) and external NVMs.
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-They play an important role in checkpointing, since ADCs are often used to estimate power-off time by reading the capacitor voltage and NVM is the checkpoint storage itself.
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-At the same time, they are likely executed at sub-normal voltage as checkpoint is executed just before the power-off.
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-Incorrect execution of these components may lead to unsafe or incomplete checkpoint executions.
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+Two of the most relevant examples are Analog-Digital Converters (ADCs) and external NVMs.
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+They play an important role in checkpointing, since ADCs are often used to estimate power-off time by reading the capacitor voltage and NVM serves as the storage for checkpoints.
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+At the same time, they are likely to operate at sub-normal voltages, as it is most efficient to execute checkpoint just before power-off.
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+% Incorrect execution of these components may lead to unsafe or incomplete checkpoint executions.
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\begin{figure}
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\centering
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@@ -215,16 +219,17 @@ Incorrect execution of these components may lead to unsafe or incomplete checkpo
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\end{figure}
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Fig.~\ref{fig:adc_error} shows the behavior of ADCs in sub-normal voltage.
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-ADC quantizes the input analog voltage into the range of discrete $n$ values from 0 to $V_{ref}$, where $n$ is a resolution and $V_{ref}$ is a reference voltage.
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-As STM32L5 uses Vdd as reference voltage, accessing ADC during sub-normal voltage operation results in inconsistent results.
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-As shown in the figure, it returns larger values than the measurements since the range ADC can represent is decreased as Vdd decreases.
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-As a result, during sub-normal voltage operation, the system may believe there is sufficient energy from the ADC results and decide not to execute checkpoint.
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-
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-Also, some peripherals may not work below certain voltage.
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-Fig.~\ref{fig:fram_drror} presents the error rate of FRAM in the reference system at different voltages, showing FRAM cannot operate correctly when the voltage is below 2.4V.
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-Since the system operates until it reaches the lowest MCU operation voltage (e.g., 1.7V), software designers should guarantee that peripherals are accessed at safe voltage.
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-In our reference system, failing to this may result in corrupted or incomplete checkpointing.
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-In Sec.~\ref{sec:design_guidelines}, we propose two techniques that can safely estimate the power-off time under sub-normal voltage.
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+ADC quantizes the input analog voltage into the range of discrete $2^n$ values from 0 to $V_{ref}$, where $n$ is a resolution and $V_{ref}$ is a reference voltage, and cannot read the input voltage larger than $V_{ref}$.
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+As STM32L5 is designed to use Vdd as reference voltage, accessing the ADC during sub-normal voltage operation leads to inconsistent results.
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+As shown in the figure, the ADC returns values higher than the measurements since ADC representation range is decreased as Vdd drops.
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+As a result, during sub-normal voltage operation, the system may incorrectly interpret ADC results as there is sufficient energy and decide not to execute a checkpoint.
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+
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+Also, intermittent systems typically designed with the use of peripherals, including sensors~\cite{yildizAdaptable2024,dangIoTree2022,afanasovBatteryless2020,maengAdaptive2020}, wireless communication modules~\cite{katanbafMultiScatter2021,dewinkelIntermittentlypowered2022,babatundeGreentooth2024} or external NVMs~\cite{dewinkelIntermittentlypowered2022,kimLACT2024,kimLivenessAware2023,akhunovEnabling2023}, which have their own minimum operating voltage requirements.
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+% Also, some peripherals may not work below certain voltage.
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+Fig.~\ref{fig:fram_drror} illustrates the error rate of FRAM in the reference system at different voltages, showing FRAM cannot operate reliably below 2.4V.
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+Since the system continues operating until it reaches the lowest MCU operation voltage (e.g., 1.7V), software designers must ensure that peripherals are accessed only at safe voltage levels.
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+Failing to this can result in corrupted data or incomplete checkpointing.
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+In Sec.~\ref{sec:design_guidelines}, we propose two techniques that can safely estimate the power-off time under sub-normal voltage conditions.
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\subsection{Sensitivity to Architectural Designs}
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\label{sec:other_architectures}
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@@ -250,12 +255,12 @@ In Sec.~\ref{sec:design_guidelines}, we propose two techniques that can safely e
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}
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\end{table}
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-To evaluate the generality of our model, we employ two additional architectural setups.
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-Table~\ref{tab:architectures} shows the detailed parameters of them.
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-A1 is the same setup with the reference system but equips MRAM (Everspin MR5A16ACYS35) instead of FRAM.
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-This setup is evaluated as MRAM is also gaining attention as a next generation NVM~\cite{akhunovEnabling2023,bakarProtean2023a,dewinkelIntermittentlypowered2022,wuIntOS2024}.
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-Second target is MSP430, which has been most popular 16-bit platform in intermittent system research.
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-For both systems, we set architectural parameters to make operation time around 50ms.
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+To verify generality of our model, we evaluate it using two additional architectural setups.
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+Table~\ref{tab:architectures} shows the detailed parameters of the target architectures.
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+A1 shares the same configuration as the reference system but equips MRAM (Everspin MR5A16ACYS35) instead of FRAM.
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+This setup is included since MRAM is also gaining attention as a next generation NVM~\cite{akhunovEnabling2023,bakarProtean2023a,dewinkelIntermittentlypowered2022,wuIntOS2024}.
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+Second target is the MSP430, which has been the mostly adopted 16-bit platform in intermittent system research.
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+For both systems, the architectural parameters are set to achieve an operation time of approximately 50 ms.
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\begin{figure}
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\centering
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@@ -264,11 +269,14 @@ For both systems, we set architectural parameters to make operation time around
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\label{fig:other_architectures}
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\end{figure}
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-Fig.~\ref{fig:other_architectures} shows the results in different power-off voltage.
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-The bar in the left side shows the energy breakdown in one power cycle, and the one in the right side represents the ratio of the execution time operated at sub-voltage.
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-The most noticeable difference is ratio of energy consumed for ramp-up and init.
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-While A1 consumes 63.4\% power at this stage on average, A2 consumes only 5.6\%.
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-This is because A1 shows larger leakage current due to external MRAM, which consumes more current than FRAM in our case.
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-However, both architectures show high sub-voltage execution rates, up to 70.1\% in A2.
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-In addition, discharged energy takes considerable portion both in A1 (31.4\%) and A2 (52.0\%) at 3.3V configuration, which represents the techniques based on the traditional model.
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-In summary, the evaluation reveals that the buffering effect of system's capacitance and its implications are general in other systems.
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+Fig.~\ref{fig:other_architectures} shows the results for different power-off voltages.
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+The bars on the left illustrate the energy breakdown in a single power cycle, and the bars on the right represent the ratio of the execution time operated at sub-voltage.
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+The most noticeable difference is ratio of energy consumed during the ramp-up and init stage.
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+While A1 consumes 63.4\% power at this stage on average, only 5.6\% of energy is consumed in A2.
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+This is because A1 is configured to use external MRAM, which exhibits significantly higher leakage current than FRAM used in the reference system.
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+In contrast, MSP430 (A2) is equipped with on-chip FRAM, which has much lower leakage.
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+
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+Despite these differences, both architectures exhibit high sub-voltage execution rates, up to 55.5\% in A1 and 70.1\% in A2.
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+In addition, discharged energy takes considerable portion in both A1 (31.4\%) and A2 (52.0\%) at 3.3V power-off voltage configuration, which represents the techniques based on the traditional model that halt immediately at power-off threshold.
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+In summary, the evaluation demonstrates that the modeled buffering effects are general and their impacts are significant across different system architectures.
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+% In summary, the evaluation reveals that the buffering effect of system's capacitance and its implications are general in other systems.
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