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Comparison of PSO-Based Optimized Feature Computation for Automated Configuration of Multi-sensor Systems

机译:基于PSO的多传感器系统自动配置优化特征计算的比较

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摘要

The design of intelligent sensor systems requires sophisticated methods from conventional signal processing and computational intelligence. Currently, a significant part of the overall system architecture still has to be manually elaborated in a tedious and time consuming process by an experienced designer. Clearly, an automatic method for auto-configuration of sensor systems would be salient. In this paper, we contribute to the optimization of the feature computation step in the overall system design, investigating multi-level thresholding (MLT) and Gaussian windowing. Our goals are to compare these two feature computation methods and two evolutionary optimization techniques, i.e., genetic algorithm (GA) and particle swarm optimization (PSO). To compare with previous research work gas sensor benchmark data is used. In the comparison of GA and PSO the latter method provided superior results of 100% recognition in generalization for thresholding, which proved to be more powerful method.
机译:智能传感器系统的设计需要常规信号处理和计算智能中的复杂方法。当前,整个系统体系结构的重要部分仍然必须由经验丰富的设计人员以繁琐且耗时的过程手动完成。显然,一种自动配置传感器系统的自动方法将很重要。在本文中,我们致力于研究整个系统设计中的特征计算步骤,研究多级阈值(MLT)和高斯开窗。我们的目标是比较这两种特征计算方法和两种进化优化技术,即遗传算法(GA)和粒子群优化(PSO)。为了与先前的研究工作进行比较,使用了气体传感器基准数据。在GA和PSO的比较中,后一种方法在阈值泛化方面提供了100%识别的优异结果,这被证明是更有效的方法。

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