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Low Refrigerant Algorithm Detection for Cooling Systems Relying on Trending and Data Analysis

机译:低冷轧系统依赖趋势和数据分析的低制冷剂算法检测

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A hybrid algorithm of an enhanced version of Mann-Kendall trending and data analysis is proposed to solve the limitations of current technology in detecting and diagnosing cooling system refrigerant faults in general and refrigerant leakage specifically. A data abstraction mechanism is applied over feed of temperatures and power measurement to calculate and store only the significant information for further analysis. Next, an enhanced version of Mann-Kendall trending is applied periodically over the stored data to calculate the trend strength (upward or downward) for each measurement. Finally, a harmonic mean is utilized to balance the trends contribution and evaluate the result against a threshold value for potential faults. Such an algorithm is expected to have an important positive impact, because it is designed to accurately detect low refrigerant at an early stage. This should help in the following ways: (a) to reduce the impact of refrigerant emissions on climate, and (b) to potentially reduce the U.S. energy use by more than 0.1-.02 quad per year. This algorithm is a robust first step towards leveraging the latest technology advancements, especially in computer science and mathematics, in order to vertically advance the field of cooling systems.
机译:提出了一种曼诺肯德趋势和数据分析增强版的混合算法,以解决当前技术在综合检测和诊断冷却系统制冷剂故障时的限制,具体而言,制冷剂泄漏。数据抽象机制被应用于温度和功率测量的馈送,以计算和存储更重要的信息以进一步分析。接下来,在存储的数据上定期应用Mann-Kendall趋势的增强版本,以计算每个测量的趋势强度(向上或向上)。最后,利用谐波平均值来平衡趋势贡献,并评估结果以抵抗潜在故障的阈值。这种算法预计具有重要的积极影响,因为它旨在在早期阶段准确地检测低制冷剂。这应采用以下方式提供帮助:(a)减少制冷剂排放对气候的影响,(b)潜在地减少每年超过0.1-02 Quad的能源使用。该算法是一种强大的第一步,旨在利用最新的技术进步,特别是在计算机科学和数学中,以垂直推进冷却系统领域。

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