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Marine NMEA 2000 Smart Sensors for Ship Batteries Supervision and Predictive Fault Diagnosis

机译:Marine NMEA 2000智能传感器,用于船舶电池监控和预测故障诊断

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摘要

In this paper, an application for the management, supervision and failure forecast of a ship’s energy storage system is developed through a National Marine Electronics Association (NMEA) 2000 smart sensor network. Here, the NMEA 2000 network sensor devices for the measurement and supervision of the parameters inherent to energy storage and energy supply are reviewed. The importance of energy storage systems in ships, the causes and models of battery aging, types of failures, and predictive diagnosis techniques for valve-regulated lead-acid (VRLA) batteries used for assisted and safe navigation are discussed. In ships, battery banks are installed in chambers that normally do not have temperature regulation and therefore are significantly conditioned by the outside temperature. A specific method based on the analysis of the time-series data of random and seasonal factors is proposed for the comparative trend analyses of both the battery internal temperature and the battery installation chamber temperature. The objective is to apply predictive fault diagnosis to detect any undesirable increase in battery temperature using prior indicators of heat dissipation process failure—to avoid the development of the most frequent and dangerous failure modes of VRLA batteries such as dry out and thermal runaway. It is concluded that these failure modes can be conveniently diagnosed by easily recognized patterns, obtained by performing comparative trend analyses to the variables measured onboard by NMEA sensors.
机译:在本文中,通过国家海洋电子协会(NMEA)2000智能传感器网络开发了船舶能量存储系统的管理,监督和失败预测。这里,综述了用于测量和监督能量存储和能量供应所固有的参数的NMEA 2000网络传感器装置。讨论了储蓄,电池老化的原因和模型,故障类型以及用于辅助和安全导航的阀调节铅酸(VRLA)电池的阀门调节类型和预测诊断技术的重要性。在船舶中,电池组安装在通常没有温度调节的腔室中,因此由外部温度显着调节。提出了一种基于分析随机和季节因素的时间序列数据的特定方法,用于电池内部温度和电池安装室温度的比较趋势分析。目的是应用预测的故障诊断,以检测使用散热过程的现有指标的电池温度的任何不良增加 - 以避免开发vrla电池的最常见和危险的失效模式,如干出和热失控。得出结论,通过易于识别的模式可以方便地诊断这些破坏模式,通过对NMEA传感器造成的变量进行比较趋势分析而获得。

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