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Uncertainty reduction in measuring and verification of energy savings by statistical learning in manufacturing environments

机译:通过在制造环境中进行统计学习来减少测量和验证节能量的不确定性

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摘要

Industry 4.0 methodological advancements based on continuous analytics and on the sensorization of manufacturing lines make it possible to design and develop integrated systems for measurement and verification of the impact of implemented energy conservation measures (ECM) in industrial plants. The pilot study presented here has focused on developing a model of the energy consumption of the injection machines in a manufacturing facility. The energy savings are calculated by comparing energy consumption of the post- and pre-ECM periods, adjusted so that the comparison is made in the pre-ECM operating conditions. The contribution of the model is to reduce the uncertainty, i.e. to provide narrower limits for the possible values of the estimate of consumed energy, by taking advantage of the fact that the period in which the energy savings are to be measured is usually quite larger than the time intervals in which the energy performance measurements are taken. This better approximation of the range of possible values for the estimate is achieved by combining traditional statistics and machine learning methods.
机译:基于持续分析和生产线传感的工业4.0方法论进步,使设计和开发集成系统成为可能,从而可以测量和验证工厂实施的节能措施(ECM)的影响。这里介绍的先期研究的重点是开发制造工厂中注射机能耗的模型。节能量是通过比较ECM前后的能耗计算得出的,并进行了调整,以便在ECM之前的工作条件下进行比较。该模型的作用是通过利用以下事实来减少不确定性,即为能耗估算的可能值提供更窄的限制:测量节能量的时间通常比进行能量性能测量的时间间隔。通过结合传统的统计数据和机器学习方法,可以更好地估算出可能的估计值范围。

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