| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170 |
- \section{Detailed Intermittent Execution Model}
- In this section, we describe a detailed execution model of intermittent systems based on our observations from the measurement.
- In Sec.~\ref{sec:system_description}, we introduce the typical hardware setup of intermittent systems and the system we collected the data from.
- Sec.~\ref{sec:execution_model} presents the key observations from our measurements and proposes our detailed execution model.
- \subsection{System Description}
- \label{sec:system_description}
- \begin{figure}
- \centering
- \includegraphics[width=\linewidth]{figs/cropped/system.pdf}
- \caption{A typical hardware setup of intermittent systems.}
- \label{fig:hardware_setup}
- \end{figure}
- A typical intermittent system consists of two components: a power management system and a computing system.
- Fig.~\ref{fig:hardware_setup} illustrates this setup.
- The power management system is responsible for collecting the incoming power into energy storage and providing a stable-voltage current to the computing system.
- The computing system equips NVMs along with the MCU and peripherals, and utilize the NVMs for state retention between power failures.
- This setup has two notable decoupling capacitors that affect the execution model of intermittent systems.
- The first one is attached to the power management system, as voltage regulators need a capacitor larger than the required capacitance for correct execution.
- Also, the computing system also has a decoupling capacitor.
- In this work, our goal is to model the buffering effects of these capacitors and evaluate their implications on software designs.
- (Recent studies present the need for better computing capability~\cite{bakarProtean2023a})
- For model validation and evaluation, we use a custom-built board equipped with an ARM Cortex-M33 core and XXMB of FRAM.
- Our setup requires XXuF and 220uF capacitors for C1 and C2, respectively, for stable execution of checkpoint and recovery.
- Sec.~\ref{sec:other_architectures} evaluates our model in different architectures.
- \subsection{Execution Model}
- \label{sec:execution_model}
- \begin{figure}
- \centering
- \begin{subfigure}{\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_8a_cropped.pdf}
- \caption{Trace of one power cycle.}
- \label{fig:execution_trace_one_cycle}
- \vspace{5pt}
- \end{subfigure}
- \begin{subfigure}{\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_8b_cropped.pdf}
- \caption{Detailed trace.}
- \label{fig:execution_trace_detailed}
- \end{subfigure}
- \caption{Voltage measurement of capacitor and Vdd (470uF, 1.5mA current supply).}
- \label{fig:execution_trace}
- \end{figure}
- Fig.~\ref{fig:execution_trace} shows the voltage trace of the energy storage and the Vdd of the computing system.
- A 470uF capacitor is used for the energy storage to generate execution of xx ms under 1.5mA current supply.
- 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.
- Three key observations that affect software designer's decision.
- \begin{itemize}
- \item \textbf{O1}: The capacitor voltage drops quickly to charge decoupling capacitor when system wakes-up ($t1$--$t2$).
- \item \textbf{O2}: The system executes at sub-voltage using the decoupling capacitor, even after power supply stops ($t4$--$t5$).
- \item \textbf{O3}: The decoupling capacitor discharges while the system is powered-off (after $t5$).
- \end{itemize}
- \begin{figure}
- \centering
- \includegraphics[width=\linewidth]{figs/cropped/detailed_execution_model.pdf}
- \caption{Detailed execution model of intermittent systems.}
- \label{fig:detailed_execution_model}
- \end{figure}
- Fig.~\ref{fig:detailed_execution_model} shows our detailed execution model, which reflects all the key observations.
- In the following sections, we discuss how this model benefits the software design.
- \subsection{Impact on Power Efficiency}
- The traditional model implies that power consumed between power-on and power-off thresholds are entirely used for the computing system (including hardware initialization and recovery).
- However, our model reveals that huge energy is used for charging the decaps (\textbf{O1}) and discharged during power-off durations (\textbf{O3}).
- This implies that much smaller energy is used for the useful computation compared to the designer's expectation.
- \begin{figure}
- \centering
- \includegraphics[width=\linewidth]{figs/plot_expr_5_cropped.pdf}
- \caption{Distribution of energy consumed in a power cycle in different capacitor sizes (1mA current supply).}
- \label{fig:power_distribution}
- \end{figure}
- Fig.~\ref{fig:power_distribution} shows the distribution of the energy consumed for each stage of intermittent execution within one power cycle, averaged over XX executions, in various capacitor sizes.
- The line represents the average time of useful computation.
- The checkpoint is executed by the interrupt from the power management system, which is generated when the capacitor voltage reaches the power-off threshold (3.4V).
- Note that this is the last point for checkpoint execution according to the traditional model.
- The results shows that significant energy is wasted in decoupling capacitor.
- The cost is more expensive when the capacitor size is small since the decaps discharge rate follows the RC-discharging circuits.
- While using smaller capacitors shortens the power-off durations, the discharging behavior penalizes them most since XX\% of energy is discharged at the first XX ms.
- 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.
- It brings significant errors between the two models in available energy for the execution.
- In 470uF case, the actual energy efficiency (Execution) and the expectation from the traditional model (Execution and Discharged) differs by XX times.
- (Limitations of power failure injection and simulation based evaluations).
- \subsection{Impact on Predicting Power Failures}
- \begin{figure}
- \centering
- \begin{subfigure}{\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_6a_cropped.pdf}
- \caption{Input current is 1mA.}
- % \label{fig:eval_voltage_trace}
- \vspace{5pt}
- \end{subfigure}
- \begin{subfigure}{\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_6b_cropped.pdf}
- \caption{Input current is 3mA.}
- % \label{fig:eval_adaptivenss_finished_tasks}
- \end{subfigure}
- \caption{Ratio of sub-voltage operations in total execution time.}
- % \label{fig:}
- \end{figure}
- According to the traditional model, the system states should be saved to NVM before power-off threshold.
- Our model shows that the system may operate after this point using the energy stored in the decaps (\textbf{O2}).
- As a result, the energy storage voltage is not a good approximate of the remaining time that system can execute.
- \subsection{Impact of Sub-normal Voltage Execution}
- The traditional model makes the software designers assume the system is executed under stable voltage.
- However, the execution after the power-off threshold (\textbf{O3}) happens in sub-normal voltage.
- Being aware of this is important to the software designers since the peripherals and analog components may function differently.
- The two most critical examples are Analog-Digital Converter (ADC) and external memory.
- \begin{figure}
- \centering
- \begin{subfigure}{0.45\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_2_cropped.pdf}
- \caption{Trace of one power cycle.}
- % \label{fig:eval_voltage_trace}
- \end{subfigure}
- \hfill
- \begin{subfigure}{0.52\linewidth}
- \includegraphics[width=\textwidth]{figs/plot_expr_3_cropped.pdf}
- \caption{Detailed trace.}
- % \label{fig:eval_adaptivenss_finished_tasks}
- \end{subfigure}
- \caption{Voltage of the capacitor and Vdd, sampled 470uF and 1.5mA.}
- % \label{fig:}
- \end{figure}
- \subsection{Sensitivity to Architectural Designs}
- \label{sec:other_architectures}
- Finally, we evaluate our model against two different architectural setups: MSP430 and Cortex-M33 with MRAM.
- MSP430 has less computational capability than Cortex-M33 cores.
- But it is a most popular platform for intermittent system researches, since it is a low-power system having on-chip FRAM.
- We used MSP430FR5994 evaluation board, having 10uF of onboard decap.
- For the second setup, we put MRAM to our evaluation platform instead of FRAM.
- Core frequencies, capacitance of power management system, input power targeting xx ms execution.
- \begin{figure}
- \centering
- \includegraphics[width=\linewidth]{figs/plot_expr_9_cropped.pdf}
- \caption{Energy breakdown and the ratio of sub-voltage operations in different architectures.}
- \label{fig:other_architectures}
- \end{figure}
- Fig.~\ref{fig:other_architectures} shows the results in different power-off voltage.
- The bar in the left shows the energy breakdown in one power cycle, and the one in the right represents the ratio of the execution time operated in sub-voltage.
|