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首页> 外文期刊>Expert Systems with Application >Classification of physiological signals for wheel loader operators using Multi-scale Entropy analysis and case-based reasoning
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Classification of physiological signals for wheel loader operators using Multi-scale Entropy analysis and case-based reasoning

机译:利用多尺度熵分析和基于案例的推理对轮式装载机操作员进行生理信号分类

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摘要

Sensor signal fusion is becoming increasingly important in many areas including medical diagnosis and classification. Today, clinicians/experts often do the diagnosis of stress, sleepiness and tiredness on the basis of information collected from several physiological sensor signals. Since there are large individual variations when analyzing the sensor measurements and systems with single sensor, they could easily be vulnerable to uncertain noises/interferences in such domain; multiple sensors could provide more robust and reliable decision. Therefore, this paper presents a classification approach i.e. Multivariate Multiscale Entropy Analysis-Case-Based Reasoning (MMSE-CBR) that classifies physiological parameters of wheel loader operators by combining CBR approach with a data level fusion method named Multivariate Multiscale Entropy (MMSE). The MMSE algorithm supports complexity analysis of multivariate biological recordings by aggregating several sensor measurements e.g., Inter-beat-lnterval (IB1) and Heart Rate (HR) from Electrocardiogram (ECG), Finger Temperature (FT), Skin Conductance (SC) and Respiration Rate (RR). Here, MMSE has been applied to extract features to formulate a case by fusing a number of physiological signals and the CBR approach is applied to classify the cases by retrieving most similar cases from the case library. Finally, the proposed approach i.e. MMSE-CBR has been evaluated with the data from professional drivers at Volvo Construction Equipment, Sweden. The results demonstrate that the proposed system that fuses information at data level could classify 'stressed' and 'healthy' subjects 83.33% correctly compare to an expert's classification. Furthermore, with another data set the achieved accuracy (83.3%) indicates that it could also classify two different conditions 'adapt' (training) and 'sharp' (real-life driving) for the wheel loader operators. Thus, the new approach of MMSE-CBR could support in classification of operators and may be of interest to researchers developing systems based on information collected from different sensor sources.
机译:传感器信号融合在包括医学诊断和分类在内的许多领域中变得越来越重要。如今,临床医生/专家经常根据从几种生理传感器信号中收集到的信息来诊断压力,嗜睡和疲倦。由于在分析单个传感器的传感器测量值和系统时会有很大的个体差异,因此它们很容易受到此类领域中不确定的噪声/干扰的影响;多个传感器可以提供更强大,更可靠的决策。因此,本文提出了一种分类方法,即基于案例分析的多变量多尺度熵分析(MMSE-CBR),该方法通过将CBR方法与名为多变量多尺度熵(MMSE)的数据级融合方法相结合来对轮式装载机操作员的生理参数进行分类。 MMSE算法通过汇总多个传感器测量值(例如心电图(ECG)的心跳间隔(IB1)和心率(HR),手指温度(FT),皮肤电导(SC)和呼吸)来支持多变量生物记录的复杂性分析费率(RR)。此处,MMSE已应用于通过融合许多生理信号来提取特征以制定案例的方式,而CBR方法则通过从案例库中检索最相似的案例而应用于对案例进行分类。最后,根据瑞典沃尔沃建筑设备公司专业驾驶员的数据对所建议的方法(即MMSE-CBR)进行了评估。结果表明,与专家分类相比,在数据级别融合信息的拟议系统可以正确地将“压力”和“健康”受试者分类为83.33%。此外,通过另一个数据集,已达到的准确度(83.3%)表明,它还可以为轮式装载机操作员分类两个不同的条件“适应”(训练)和“锐利”(现实驾驶)。因此,MMSE-CBR的新方法可以支持对操作员进行分类,并且对于基于从不同传感器来源收集的信息来开发系统的研究人员可能会感兴趣。

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