A Hidden Semi-Markov Model for Predicting Production Cycle Time Using Bluetooth Low Energy Data

None Karishma Agrawal, None Supachai Vorapojpisut
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Abstract

This study proposes a statistical model to characterize the temporal characteristics of an entire production process. The model utilizes received signal strength indicator (RSSI) data obtained from a Bluetooth low energy (BLE) network. A hidden semi-Markov model (HSMM) is formulated based on the characteristics of the production process, and the forward-backward algorithm is employed to re-estimate the probability distribution of state durations. The proposed method is validated through numerical, simulation, and real-world experiments, yielding promising results. The results show that the Kullback-Leibler divergence (KLD) score of 0.1843, while the simulation achieves an average vector distance score of 0.9740. The real-time experiment also shows a reasonable accuracy, with an average HSMM estimated throughput time of 30.48 epochs, compared to the average real throughput time of 33.99 epochs. Overall, the model serves as a valuable tool for predicting the cycle time and throughput time of a production line.
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利用蓝牙低功耗数据预测生产周期时间的隐式半马尔可夫模型
本研究提出一个统计模型来描述整个生产过程的时间特征。该模型利用从蓝牙低功耗(BLE)网络获得的接收信号强度指示器(RSSI)数据。根据生产过程的特点建立了隐半马尔可夫模型(HSMM),并采用前向-后向算法对状态持续时间的概率分布进行了重新估计。通过数值、仿真和实际实验验证了该方法的有效性,取得了令人满意的结果。结果表明,Kullback-Leibler散度(KLD)得分为0.1843,而模拟的平均矢量距离得分为0.9740。实时实验也显示了合理的准确性,HSMM的平均估计吞吐量为30.48 epoch,而平均实际吞吐量为33.99 epoch。总体而言,该模型是预测生产线周期时间和生产时间的有价值的工具。
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
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