Space and Time Efficiency Analysis of Data-Driven Methods Applied to Embedded Systems

Iron Tessaro, R. Z. Freire, V. Mariani, L. Coelho
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Abstract

One of the applications of data-driven methods in the industry is the creation of real-time, embedded measurements, whether to monitor or replace sensor signals. As the number of embedded systems in products raises over time, the energy efficiency of such systems must be considered in the design. The time (processor) efficiency of the embedded software is directly related to the energy efficiency of the embedded system. Therefore, when considering some embedded software solutions, such as data-driven methods, time efficiency must be taken into account to improve energy efficiency. In this work, the energy efficiency of three data-driven methods: the Sparse Identification of Nonlinear Dynamics (SINDy), the Extreme Learning Machine (ELM), and the Random-Vector Functional Link (RVFL) network were assessed by using the creation of a real-time in-cylinder pressure sensor for diesel engines as a task. The three methods were kept with equivalent performances, whereas their relative execution time was tested and classified by their statistical rankings. Additionally, the space (memory) efficiency of the methods was assessed. The contribution of this work is to provide a guide to choose the best data-driven method to be used in an embedded system in terms of efficiency.
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应用于嵌入式系统的数据驱动方法的时空效率分析
数据驱动方法在行业中的应用之一是创建实时嵌入式测量,无论是监控还是替换传感器信号。随着产品中嵌入式系统的数量随着时间的推移而增加,必须在设计中考虑此类系统的能源效率。嵌入式软件的时间(处理器)效率直接关系到嵌入式系统的能源效率。因此,在考虑一些嵌入式软件解决方案时,例如数据驱动方法,必须考虑时间效率,以提高能源效率。在这项工作中,三种数据驱动的方法:非线性动力学稀疏识别(SINDy)、极限学习机(ELM)和随机向量功能链接(RVFL)网络的能源效率通过创建柴油发动机的实时缸内压力传感器作为一项任务来评估。这三种方法保持相同的性能,而它们的相对执行时间通过它们的统计排名进行测试和分类。此外,还评估了这些方法的空间(内存)效率。这项工作的贡献是提供了一个指南,以选择最佳的数据驱动方法,用于嵌入式系统的效率方面。
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