Guest Editorial: Special issue on battery-free computing

IF 1.1 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IET Computers and Digital Techniques Pub Date : 2022-06-09 DOI:10.1049/cdt2.12043
Geoff V. Merrett, Bernd-Christian Renner, Brandon Lucia
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Abstract

In order to realise the vision and scale of the Internet of Things (IoT), we cannot rely on mains electricity or batteries to power devices due to environmental, maintenance, cost and physical volume implications. Considerable research has been undertaken in energy harvesting, allowing systems to extract electrical energy from their surrounding environments. However, such energy is typically highly dynamic, both spatially and temporally. In recent years, there has been an increase in research around how computing can be effectively performed from energy harvesting supplies, moving beyond the concepts of battery-powered and energy-neutral systems, thus enabling battery-free computing.

Challenges in battery-free computing are broad and wide-ranging, cutting across the spectrum of electronics and computer science—for example, circuits, algorithms, computer architecture, communication and networking, middleware, applications, deployments, and modelling and simulation tools.

This special issue explores the challenges, issues and opportunities in the research, design, and engineering of energy-harvesting, energy-neutral and intermittent sensing systems. These are enabling technologies for future applications in smart energy, transportation, environmental monitoring and smart cities. Innovative solutions are needed to enable either uninterrupted or intermittent operation.

This special issue contains two papers on different aspects of battery-free computing, as described below.

Hanschke et al.‘s article on ‘EmRep: Energy Management Relying on State-of-Charge Extrema Prediction’ considers energy management in energy-neutral systems, particularly those with small energy storage elements (e.g. a supercapacitor). They observe that existing energy-neutral management approaches have a tendency to operate inefficiently when exposed to extremes in the harvesting environment, for example, wasting harvested power in times of abundant energy due to saturation of the energy storage device. To resolve this, the authors present an approach to predict extremes in device state-of-charge (SoC) when such conditions are occurring and hence switch to a less conservative and more immediate policy for device activity (and hence, consumption). This decouples energy management of high-intake from low-intake harvest periods and ensures that the saturation of energy storage is reduced by design. The approach is thoroughly experimentally evaluated in combination with a variety of different prediction algorithms, time resolutions, and energy storage sizes. Promising results indicate the potential for a doubling in effective utility in systems with only small energy storage elements.

The second paper in the special issue, authored by Stricker et al., continues the theme of energy prediction by considering the impact of harvesting source prediction errors on the system scheduler and hence the system's performance. Their article, ‘Robustness of Predictive Energy Harvesting Systems - Analysis and Adaptive Prediction Scaling’, defines a new robustness metric to describe the effect that prediction errors have and demonstrates the concept using data sets from both indoor and outdoor harvesting scenarios. The authors subsequently propose an adaptive prediction scaling method that learns from the local environment and system behaviour, demonstrating a performance improvement of up to 13.8 times in a real-world setting.

We hope that this special issue stimulates researchers in both industry and academia to undertake further research in this challenging field.

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嘉宾评论:关于无电池计算的特刊
为了实现物联网(IoT)的愿景和规模,由于环境、维护、成本和物理体积的影响,我们不能依赖电源或电池为设备供电。在能量收集方面已经进行了大量的研究,使系统能够从周围环境中提取电能。然而,这种能量在空间和时间上都是高度动态的。近年来,关于如何从能量收集供应中有效地执行计算的研究有所增加,超越了电池供电和能量中性系统的概念,从而实现了无电池计算。无电池计算的挑战是广泛而广泛的,跨越了电子和计算机科学的各个领域,例如电路、算法、计算机体系结构、通信和网络、中间件、应用程序、部署以及建模和仿真工具。本期特刊探讨了能量收集、能量中性和间歇传感系统的研究、设计和工程中的挑战、问题和机遇。这些都是未来智能能源、交通、环境监测和智能城市应用的使能技术。需要创新的解决方案来实现不间断或间歇操作。本期特刊包含两篇关于无电池计算不同方面的论文,如下所述。Hanschke等人的文章“EmRep:基于充电状态极值预测的能源管理”考虑了能量中性系统中的能源管理,特别是那些具有小型储能元件(例如超级电容器)的系统。他们观察到,当暴露在极端的收集环境中时,现有的能量中性管理方法有一种低效率的趋势,例如,由于能量存储设备的饱和,在能量充足的时候浪费了收集的能量。为了解决这个问题,作者提出了一种方法,当这种情况发生时,可以预测设备充电状态(SoC)的极端情况,从而切换到不那么保守和更直接的设备活动(因此,消耗)策略。这将高摄入的能量管理与低摄入的收获期解耦,并确保通过设计降低能量储存的饱和度。该方法与各种不同的预测算法、时间分辨率和能量存储大小相结合,进行了彻底的实验评估。有希望的结果表明,在只有小型储能元件的系统中,有效效用有可能翻倍。特刊中的第二篇论文由Stricker等人撰写,通过考虑收集源预测误差对系统调度程序的影响以及系统性能,继续了能量预测的主题。他们的文章《预测能量收集系统的稳健性——分析和自适应预测缩放》定义了一个新的稳健性度量来描述预测误差的影响,并使用来自室内和室外收集场景的数据集演示了这一概念。作者随后提出了一种自适应预测缩放方法,该方法从本地环境和系统行为中学习,在现实环境中证明了高达13.8倍的性能改进。我们希望这期特刊能激励工业界和学术界的研究人员在这一具有挑战性的领域进行进一步的研究。
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来源期刊
IET Computers and Digital Techniques
IET Computers and Digital Techniques 工程技术-计算机:理论方法
CiteScore
3.50
自引率
0.00%
发文量
12
审稿时长
>12 weeks
期刊介绍: IET Computers & Digital Techniques publishes technical papers describing recent research and development work in all aspects of digital system-on-chip design and test of electronic and embedded systems, including the development of design automation tools (methodologies, algorithms and architectures). Papers based on the problems associated with the scaling down of CMOS technology are particularly welcome. It is aimed at researchers, engineers and educators in the fields of computer and digital systems design and test. The key subject areas of interest are: Design Methods and Tools: CAD/EDA tools, hardware description languages, high-level and architectural synthesis, hardware/software co-design, platform-based design, 3D stacking and circuit design, system on-chip architectures and IP cores, embedded systems, logic synthesis, low-power design and power optimisation. Simulation, Test and Validation: electrical and timing simulation, simulation based verification, hardware/software co-simulation and validation, mixed-domain technology modelling and simulation, post-silicon validation, power analysis and estimation, interconnect modelling and signal integrity analysis, hardware trust and security, design-for-testability, embedded core testing, system-on-chip testing, on-line testing, automatic test generation and delay testing, low-power testing, reliability, fault modelling and fault tolerance. Processor and System Architectures: many-core systems, general-purpose and application specific processors, computational arithmetic for DSP applications, arithmetic and logic units, cache memories, memory management, co-processors and accelerators, systems and networks on chip, embedded cores, platforms, multiprocessors, distributed systems, communication protocols and low-power issues. Configurable Computing: embedded cores, FPGAs, rapid prototyping, adaptive computing, evolvable and statically and dynamically reconfigurable and reprogrammable systems, reconfigurable hardware. Design for variability, power and aging: design methods for variability, power and aging aware design, memories, FPGAs, IP components, 3D stacking, energy harvesting. Case Studies: emerging applications, applications in industrial designs, and design frameworks.
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