For Cyper-Physical Production Systems (CPPS), localization is becoming increasingly important as wireless and mobile devices are considered an integral part. While localizing targets in a wireless communication system based on the Received Signal Strength Indicators (RSSIs) is a usual solution, it is limited by sensor quality. We consider the scenario of a car moving in and out of a chamber and propose to use a particle filter for sensor fusion, allowing us to incorporate non-idealities in our model and achieve a high-quality position estimate. Then, we use Machine Learning (ML) to classify the vehicle position. Our results show that the location output of the particle filter is a better input to the classifiers than the raw RSSI data, and we achieve improved accuracy while simultaneously reducing the number of features that the ML has to consider. We also compare the performance of multiple ML algorithms and show that SVMs provide the overall best performance for the given task.
翻译:对于Cyper-Physical Production Systems(CPPS)而言,本地化越来越重要,因为无线和移动设备被视为一个不可分割的组成部分。虽然根据收到的信号强度指标(RSSI)在无线通信系统中将目标本地化是一种常见的解决办法,但受到传感器质量的限制。我们认为汽车进出一个室室的情景是有限的,并提议使用粒子过滤器进行感应聚合,从而使我们能够将非理想性纳入模型,并实现高质量的位置估计。然后,我们用机器学习(ML)来对车辆位置进行分类。我们的结果显示,粒子过滤器的位置输出比原始RSSI数据对分类器的输入更好,我们提高了准确性,同时减少了ML必须考虑的特性数量。我们还比较了多个 ML 算法的性能,并表明SVMS提供了特定任务的总体最佳性能。