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Algorithmic mitigation of sensor failure: Is sensor replacement really necessary?

机译:通过算法缓解传感器故障:确实需要更换传感器吗?

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Data-driven models built on metal oxide (MOX) gas sensor arrays are broadly used to detect and discriminate a wide variety of chemical substances. Usually, a system composed of gas sensors and data processing algorithms is initially trained under controlled conditions with the aim to make accurate predictions of the new samples acquired. However, MOX gas sensors undergo two major impairments in the forms of sensor failures and drift that deteriorate the predictions' capabilities of the previously calibrated models. While a variety of algorithms has been proposed to cope with the sensor drift problem, sensor failures have received much less attention despite their recurrent appearance after a certain time of operation. In this paper we propose a novel methodology based on multiple kernels to increase the robustness of e-nose systems against sensor failures. We built various multi-kernel models using multiple subsets of sensors and analyzed their performance when increasing the number of faulty sensors. Using an 8-sensor array module exposed to six different gases, we show that our proposed multi-kernel approach significantly increases the robustness of the system. In particular, we estimate that the percentage of multi-kernels free of faulty sensors has to be of at least 50% to maintain the performance of the classifier stable. The main conclusion drawn from this analysis is that instead of identifying which specific sensor fails, which is a nontrivial computational task and can be just temporal, the most convenient way would be to design a more robust system that requires minimal human intervention. Since the multi-kernel strategy copes with the sensor failure by itself, we claim that the lifetime of chemo-sensory systems, particularly their constituent chemical sensor devices, can be extended before the replacement of any particular chemical sensor is required.
机译:建立在金属氧化物(MOX)气体传感器阵列上的数据驱动模型广泛用于检测和区分各种化学物质。通常,首先在受控条件下训练由气体传感器和数据处理算法组成的系统,以对获得的新样品进行准确的预测。但是,MOX气体传感器以传感器故障和漂移的形式遭受了两个主要损害,这会破坏先前校准模型的预测能力。虽然已经提出了多种算法来解决传感器漂移问题,但是尽管在一定的操作时间后它们经常出现,但是传感器故障却很少受到关注。在本文中,我们提出了一种基于多个内核的新颖方法,以提高电子鼻系统对传感器故障的鲁棒性。我们使用传感器的多个子集构建了各种多内核模型,并在增加有故障的传感器数量时分析了它们的性能。使用暴露于六种不同气体的8传感器阵列模块,我们证明了我们提出的多核方法显着提高了系统的鲁棒性。特别是,我们估计没有故障传感器的多内核百分比必须至少为50%,才能保持分类器的性能稳定。从该分析得出的主要结论是,与其识别哪个特定的传感器发生故障(这是一项不平凡的计算任务,而且可能只是暂时的),最便捷的方法是设计一种功能更强大的系统,所需的人工干预最少。由于多内核策略本身可以解决传感器故障,因此我们认为,在需要更换任何特定的化学传感器之前,可以延长化学传感器系统的使用寿命,尤其是其组成的化学传感器设备。

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