Haixia Mei, , , Jingyi Peng, , , Tao Wang*, , , Bowei Zhang, , and , Fuzhen Xuan*,
{"title":"一种用于阵列优化和性能增强的可解释传感器选择策略。","authors":"Haixia Mei, , , Jingyi Peng, , , Tao Wang*, , , Bowei Zhang, , and , Fuzhen Xuan*, ","doi":"10.1021/acssensors.5c01232","DOIUrl":null,"url":null,"abstract":"<p >As more sensors are integrated into electronic nose (E-nose) systems to enhance gas detection accuracy, multitasking capabilities, and expand application scenarios, several challenges arise. These challenges include issues such as cross-sensitivity, increased hardware cost, heightened computational complexity, and information redundancy, due to the growing number of sensors in the array. As a result, array optimization plays a crucial role in improving the performance of multisensor systems. In this study, we propose a SHapley & Mutual Information-based Selection (SHMI-Select) method, which provides an interpretable sensor selection strategy for multisensor systems. This strategy initially selects the primary sensor based on interpretability analysis, followed by the identification of a secondary sensor through mutual information among sensors. Additionally, an incremental selection method is introduced to dynamically choose the optimal sensor combination, thereby ensuring system stability and adaptability in various tasks. Through interpretability analysis, our method not only helps to identify key sensors but also optimizes the sensor array combination. Finally, we validate the proposed array optimization method on three distinct E-nose data sets involving human breath, wine quality, and environmental gas. Compared to seven existing algorithms, our method substantially reduces sensor redundancy while boosting performance─achieving 62.5% fewer sensors with 10% accuracy gain on breath data, 83.3% reduction with 18% improvement on wine classification, and 62.5% reduction with a 2% R<sup>2</sup> increase on environmental gas. The proposed method has good application value and economic benefits in the industrialization of future E-nose systems.</p>","PeriodicalId":24,"journal":{"name":"ACS Sensors","volume":"10 9","pages":"6700–6713"},"PeriodicalIF":9.1000,"publicationDate":"2025-08-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"An Interpretable Sensor Selection Strategy for Array Optimization and Performance Enhancement\",\"authors\":\"Haixia Mei, , , Jingyi Peng, , , Tao Wang*, , , Bowei Zhang, , and , Fuzhen Xuan*, \",\"doi\":\"10.1021/acssensors.5c01232\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p >As more sensors are integrated into electronic nose (E-nose) systems to enhance gas detection accuracy, multitasking capabilities, and expand application scenarios, several challenges arise. These challenges include issues such as cross-sensitivity, increased hardware cost, heightened computational complexity, and information redundancy, due to the growing number of sensors in the array. As a result, array optimization plays a crucial role in improving the performance of multisensor systems. In this study, we propose a SHapley & Mutual Information-based Selection (SHMI-Select) method, which provides an interpretable sensor selection strategy for multisensor systems. This strategy initially selects the primary sensor based on interpretability analysis, followed by the identification of a secondary sensor through mutual information among sensors. Additionally, an incremental selection method is introduced to dynamically choose the optimal sensor combination, thereby ensuring system stability and adaptability in various tasks. Through interpretability analysis, our method not only helps to identify key sensors but also optimizes the sensor array combination. Finally, we validate the proposed array optimization method on three distinct E-nose data sets involving human breath, wine quality, and environmental gas. Compared to seven existing algorithms, our method substantially reduces sensor redundancy while boosting performance─achieving 62.5% fewer sensors with 10% accuracy gain on breath data, 83.3% reduction with 18% improvement on wine classification, and 62.5% reduction with a 2% R<sup>2</sup> increase on environmental gas. 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An Interpretable Sensor Selection Strategy for Array Optimization and Performance Enhancement
As more sensors are integrated into electronic nose (E-nose) systems to enhance gas detection accuracy, multitasking capabilities, and expand application scenarios, several challenges arise. These challenges include issues such as cross-sensitivity, increased hardware cost, heightened computational complexity, and information redundancy, due to the growing number of sensors in the array. As a result, array optimization plays a crucial role in improving the performance of multisensor systems. In this study, we propose a SHapley & Mutual Information-based Selection (SHMI-Select) method, which provides an interpretable sensor selection strategy for multisensor systems. This strategy initially selects the primary sensor based on interpretability analysis, followed by the identification of a secondary sensor through mutual information among sensors. Additionally, an incremental selection method is introduced to dynamically choose the optimal sensor combination, thereby ensuring system stability and adaptability in various tasks. Through interpretability analysis, our method not only helps to identify key sensors but also optimizes the sensor array combination. Finally, we validate the proposed array optimization method on three distinct E-nose data sets involving human breath, wine quality, and environmental gas. Compared to seven existing algorithms, our method substantially reduces sensor redundancy while boosting performance─achieving 62.5% fewer sensors with 10% accuracy gain on breath data, 83.3% reduction with 18% improvement on wine classification, and 62.5% reduction with a 2% R2 increase on environmental gas. The proposed method has good application value and economic benefits in the industrialization of future E-nose systems.
期刊介绍:
ACS Sensors is a peer-reviewed research journal that focuses on the dissemination of new and original knowledge in the field of sensor science, particularly those that selectively sense chemical or biological species or processes. The journal covers a broad range of topics, including but not limited to biosensors, chemical sensors, gas sensors, intracellular sensors, single molecule sensors, cell chips, and microfluidic devices. It aims to publish articles that address conceptual advances in sensing technology applicable to various types of analytes or application papers that report on the use of existing sensing concepts in new ways or for new analytes.