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首页> 外文期刊>Applied Energy >Annual electricity consumption prediction and future expansion analysis on dairy farms using a support vector machine
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Annual electricity consumption prediction and future expansion analysis on dairy farms using a support vector machine

机译:使用支持向量机的奶牛场年度用电量预测和未来扩展分析

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摘要

This study utilised a previously developed support vector machine (SVM) (trained using empirical data from 56 dairy farms) for predicting and analysing annual dairy farm electricity consumption to help improve the sustainability of the projected expansion of milk production in Ireland. Firstly, the capability of the SVM to predict annual electricity consumption was investigated at both a farm and catchment-level (combined consumption). Electricity consumption data were attained from 16 pasture-based, Irish dairy farms between June 2016 and May 2017 in conjunction with farm data related to herd size, milk production, infrastructural equipment and managerial tendencies, required to generate predictions using the SVM. The SVM predicted annual electricity consumption of dairy farms to within 10.4% (relative prediction error). Concurrently, catchment-level electricity consumption was predicted with an error value less than 5.0%. Secondly, an investigation was carried out to assess the impact of increasing herd size and milk production on dairy farm related electricity consumption at a catchment-level across ten hypothetical infrastructural scenarios. The dairy expansion analysis showed electricity economies of scale across all ten infrastructural scenarios. The greatest reduction in electricity consumption per litre was observed when all farms employed ground water for pre-cooling milk with two additional parlour units, reducing by 4% in 2018, relative to a base scenario (no change to infrastructural equipment). The results presented in this article demonstrate the potential effectiveness of the SVM as a macro-level simulation forecast tool for dairy farm electricity consumption that may be used to quantify the impact of milk production on electricity resources, or to offer decision support to dairy farmers.
机译:这项研究利用先前开发的支持向量机(SVM)(使用来自56个奶牛场的经验数据进行训练)来预测和分析年度奶牛场的用电量,以帮助提高爱尔兰牛奶产量预期增长的可持续性。首先,在农场和集水区水平(综合耗电量)上都研究了支持向量机预测年度用电量的能力。在2016年6月至2017年5月之间,从16个以牧场为基础的爱尔兰奶牛场获得了用电量数据,以及与牛群规模,牛奶产量,基础设施设备和管理趋势有关的农场数据,这些数据需要使用SVM进行预测。 SVM预测奶牛场的年用电量在10.4%以内(相对预测误差)。同时,预计流域级电力消耗的误差值小于5.0%。其次,进行了一项调查,以评估在十个假设的基础设施情景中,在集水区水平上增加牛群规模和牛奶产量对与奶牛场相关的电力消耗的影响。乳业扩张分析显示,在所有十个基础设施情景中,电力规模经济均得到体现。当所有农场都使用地下水对牛奶进行预冷却并增加两个客厅单元时,每公升的用电量减少幅度最大,相对于基本情景(基础设施没有变化),2018年减少了4%。本文提供的结果证明了SVM作为奶场电力消耗的宏观模拟预测工具的潜在有效性,可用于量化奶产量对电力资源的影响或为奶农提供决策支持。

著录项

  • 来源
    《Applied Energy》 |2019年第1期|1110-1119|共10页
  • 作者单位

    Cork Inst Technol, Dept Proc Energy & Transport Engn, Cork, Ireland;

    Cork Inst Technol, Dept Comp, Cork, Ireland;

    Teagasc Moorepk Fermoy, Anim & Grassland Res & Innovat Ctr, Fermoy, Cork, Ireland;

    Cork Inst Technol, Dept Proc Energy & Transport Engn, Cork, Ireland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Energy; Milk production; Machine-learning; Dairy expansion; Sustainability; SVM;

    机译:能量;牛奶生产;机器 - 学习;乳制品扩张;可持续性;SVM;

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