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Investigation on the use of energy efficiency for condition-based maintenance decision-making

机译:基于状态维护决策的能源效率调查

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Abstract: Condition-based maintenance (CBM) has been introduced in industrial systems to maintain preventively the correct equipment at the right time with regards to its current health “condition” represented mainly the conventional indicators such as oil temperature, harmonics data, vibration, etc. The monitoring of these indicators is done through sensors or inspection tasks leading to incorporate in the maintenance optimization models, additional costs related to CBM. Nevertheless, while this practice is quite mastered in terms of benefits and costs, it is not well adapted to face now the new challenge encountered by the “industry of the future” such as the sustainable one. Indeed CBM indicators and maintenance cost model are not really taken into account today emergent indicators (and their impacts) related to energy consumption, energy efficiency or footprint tracking. In that way, this paper is investigating the interest to use energy efficiency (EE) for CBM decision-making. Investigation is consisting first to propose a new EE-based CBM model by using energy efficiency indicator (EEI) which is defined as the amount of energy consumption to produce one useful output unit. The proposed model leads to consider energy directly in the maintenance optimization. An extension of an existing CBM by integrating energy consumption in optimization model is also investigated in the way to compare the new CBM approach with conventional (extended) one. The comparison step is developed on the case study of the TELMA platform allowing to assess the impact of EE on existing CBM strategies and to conclude on the interest of a new EE-based CBM practice both in terms of cost and efficiency.
机译:摘要:基于状态的维护(CBM)已引入工业系统中,以在正确的时间预防性维护正确的设备,因为其当前的健康“状态”主要代表常规指标,如油温,谐波数据,振动等。对这些指标的监视是通过传感器或检查任务完成的,这些任务或检查任务导致将与CBM相关的额外费用纳入维护优化模型中。然而,尽管这种做法在收益和成本方面已被很好地掌握,但它并不能很好地适应现在面对“未来工业”所遇到的新挑战,例如可持续的挑战。实际上,今天实际上并未真正考虑煤层气指标和维护成本模型,这些指标与能源消耗,能源效率或足迹跟踪相关(及其影响)。通过这种方式,本文正在研究使用能源效率(EE)进行煤层气决策的兴趣。研究工作首先包括通过使用能效指标(EEI)提出一种新的基于EE的CBM模型,该指标定义为产生一个有用的输出单位的能耗量。所提出的模型导致在维护优化中直接考虑能源。还研究了通过将能耗整合到优化模型中来扩展现有煤层气的方法,以便将新的煤层气方法与常规(扩展)方法进行比较。比较步骤是在TELMA平台的案例研究基础上开发的,可以评估EE对现有煤层气策略的影响,并就成本和效率方面基于EE的新型煤层气实践的兴趣得出结论。

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