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Idle Duration Prediction for Manufacturing System Using a Gaussian Mixture Model Integrated Neural Network for Energy Efficiency Improvement

机译:使用高斯混合模型集成神经网络的制造系统的空闲持续时间预测,以实现能效改进

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Manufacturing activities dominate the energy consumption and greenhouse emissions of the industrial sector. With the increasing concerns of greenhouse gas (GHG) emissions and climate change in recent years, the significance of the performance in terms of sustainability of manufacturing has been gradually recognized by both academia and industry. Various researches have been implemented to analyze, model, and reduce the energy consumption of manufacturing activities toward sustainable manufacturing. In a typical manufacturing system with multiple machines and buffers, the state of a certain machine is not only determined by the machine itself, but also the states of the adjacent machines and buffers. Therefore, machines may be in idle states due to nonincoming part from the upstream section of the manufacturing system or noncapacity to hold the delivered part to the downstream section of the manufacturing system. Those idle machines consume energy without production if there is no appropriate energy control strategy. In this article, we focus on the reduction of the energy waste for those idle machines in a typical multi-machine and multi-buffer manufacturing system. A Gaussian mixture model (GMM) integrated neural network is proposed to predict the duration of the idle periods for the idle machines, during which optimal energy control action can be identified and implemented under the constraint of production throughput of the manufacturing system. A manufacturing system simulator is built to provide the training dataset including the information, such as production throughput, energy consumption, buffer content, and failure rate, to the proposed neural network. A numerical case study for a five-machine-and-four-buffer manufacturing system is conducted to validate the effectiveness of the proposed prediction model in terms of the energy waste reduction for the idle machines. Note to Practitioners-This article proposes a prediction model to forecast the idle duration of the manufacturing machines in a typical multi-machine and multi-buffer manufacturing system. With this predicted result, two concerns in energy control for the idle machine, i.e., throughput protection and energy consumption reduction, can be more accurately modeled in decision-making procedure. Optimal energy control actions under the constraints of throughput maintaining and energy saving can be identified and implemented considering different warmup energy consumption and warmup time of the machines to reduce the energy waste for those machines in idle states without any production and thus, improve the energy efficiency of the entire manufacturing system.
机译:制造业占主导地位工业部门的能源消耗和温室排放。随着近年来温室气体(GHG)排放和气候变化的越来越多,在制造业可持续性方面的表现意义已被学术界和工业逐步认可。已经实施了各种研究来分析,模型,降低可持续制造业的制造业活动的能源消耗。在具有多台机器和缓冲器的典型制造系统中,特定机器的状态不仅由机器本身确定,而且是相邻机器和缓冲器的状态。因此,由于来自制造系统的上游部分或非高湿性的非连接部分,机器可以是空闲状态,或者使递送部分保持在制造系统的下游部分。如果没有适当的能量控制策略,那些空闲机器在没有生产的情况下消耗能量。在本文中,我们专注于减少典型多机和多缓冲制造系统中的怠速机的能量浪费。提出了一种高斯混合模型(GMM)集成神经网络以预测空闲机器的空闲时段的持续时间,在此期间可以在制造系统的生产吞吐量的约束下识别和实现最佳能量控制动作。建立制造系统模拟器,以提供培训数据集,包括信息,例如生产吞吐量,能耗,缓冲区内容和故障率,包括所提出的神经网络。对五种机和四缓冲制造系统进行数值案例研究,以验证所提出的预测模型在空闲机器的能量废物减少方面的有效性。从业者的说明 - 本文提出了一种预测模型,以预测典型多机和多缓冲制造系统中的制造机器的空闲持续时间。利用这种预测结果,可以在决策过程中更准确地建模了空闲机器,即吞吐量保护和能耗减少的两个问题。在吞吐量维持和节能的限制下,可以考虑和实施机器的预热时间来确定和实施最佳能量控制动作,以减少怠速状态下的能量浪费,无需任何生产,从而提高能量效率整个制造系统。

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