首页> 外文OA文献 >Development of Mathematical Models for the Assessment of Fire Risk of Some Indian Coals using Soft Computing Techniques
【2h】

Development of Mathematical Models for the Assessment of Fire Risk of Some Indian Coals using Soft Computing Techniques

机译:利用软计算技术开发一些印度煤炭火灾风险评估数学模型

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。
获取外文期刊封面目录资料

摘要

udCoal is the dominant energy source in India and meets 56% of the country’s primary commercial energy supply. In the light of the realization of the supremacy of coal to meet the future energy demands, rapid mechanization of mines is taking place to augment the Indian coal production from 643.75 million tons (MT) per annum in 2014-15 to an expected level of 1086 MT per annum by 2024-25. Most of the coals in India are obtained from low-rank coal seams. Fires have been raging in several coal mines in Indian coalfields. Spontaneous heating of coal is a major problem in the global mining industry. Different researchers have reported that a majority (75%) of these fires owe their origin to spontaneous combustion of coal. Fires, whether surface or underground, pose serious and environmental problems are causing huge loss of coal due to burning and loss of lives, sterilization of coal reserves and environmental pollution on a massive scale. udOver the years, the number of active mine fires in India has increased to an alarming 70 locations covering a cumulative area of 17 km2. In Indian coalfield, the fire has engulfed more than 50 million tons of prime coking coal, and about 200 million tons of coals are locked up due to fires. The seriousness of the problem has been realized by the Ministry of Coal, the Ministry of Labour, various statutory agencies and mining companies. The recommendations made in the 10th Conference on Safety in Mine held at New Delhi in 2007 as well as in the Indian Chamber of Commerce (ICC)-2006, New Delhi, it was stated that all the coal mining companies should rank their coal mines on a uniform scale according to their fire risk on scientific basis. This will help the mine planners/engineers to adopt precautionary measures/steps in advance against the occurrence and spread of coal mine fire. udMost of the research work carried out in India focused on the assessment of spontaneous combustion liabilities of coals based on limited conventional experimental techniques. The investigators have proposed/established statistical models to establish correlation between various coal parameters, but limited work was done on the development of soft computing techniques to predict the propensity of coal to self-heating that is yet to get due attention. Also, the classifications that have been made earlier are based on limited works which were empirical in nature, without adequate and sound mathematical base. udKeeping this in view, an attempt was made in this research work to study forty-nine coal samples of various ranks covering the majority of the Indian coalfields. The experimental/analytical methods that were used to assess the tendencies of coals to spontaneous heating were: proximate analysis, ultimate analysis, petrographic analysis, crossing point temperature, Olpinski index, flammability temperature, wet oxidation potential analysis and differential thermal analysis (DTA). The statistical regression analysis was carried out between the parameters of intrinsic properties and the susceptibility indices and the best-correlated parameters were used as inputs to the soft computing models. Further different ANN models such as Multilayer Perceptron Network (MLP), Functional Link Artificial Neural Network (FLANN) and Radial Basis Function (RBF) were applied for the assessment of fire risk potential of Indian coals. udThe proposed appropriate ANN fire risk prediction models were designed based on the best-correlated parameters (ultimate analysis) selected as inputs after rigorous statistical analysis. After the successful application of all the proposed ANN models, comparative studies were made based on Mean Magnitude of Relative Error (MMRE) as the performance parameter, model performance curves and Pearson residual boxplots. From the proposed ANN techniques, it was observed that Szb provided better fire risk prediction with RBF model vis-à-vis MLP and FLANN. The results of the proposed RBF network model was closely matching with the field records of the investigated Indian coals and can help the mine management to adopt appropriate strategies and effective action plans in advance to prevent occurrence and spread of fire. ud
机译:ud煤炭是印度的主要能源,可满足该国56%的主要商业能源供应。鉴于煤炭将满足未来的能源需求,因此正在实现矿山的快速机械化,以将印度的煤炭产量从2014-15年度的6.437亿吨增加到1086的预期水平到2024-25年每年MT。印度的大多数煤炭都来自低品位煤层。印度煤田中的几座煤矿一直在熊熊大火。自燃煤炭是全球采矿业的主要问题。不同的研究人员报告说,其中大多数(75%)的火灾归因于煤的自燃。不论是地面火灾还是地下火灾,都会造成严重的环境问题,这是由于燃烧和生命损失,煤炭储藏的灭菌以及大规模的环境污染而造成的煤炭巨大损失。多年来,印度活跃的地雷火灾数量已增加到令人震惊的70个地点,累计面积为17 km2。在印度的煤田中,大火吞没了超过5,000万吨的优质炼焦煤,约有2亿吨的煤炭因大火而被封锁。煤炭部,劳动部,各种法定机构和矿业公司已经意识到了这一问题的严重性。 2007年在新德里举行的第十届矿山安全会议以及在新德里的印度商会(ICC)-2006中提出的建议指出,所有煤矿公司都应将其煤矿排在第在科学的基础上根据他们的火灾风险制定统一的规模。这将有助于矿山规划人员/工程师提前采取预防措施/步骤,以防止煤矿火灾的发​​生和蔓延。 ud在印度进行的大多数研究工作都集中在基于有限的常规实验技术的煤的自然燃烧性评估上。研究人员已经提出/建立了统计模型来建立各种煤参数之间的相关性,但是在软计算技术的发展方面所做的工作有限,以预测煤自热的倾向尚未引起足够的重视。而且,较早进行的分类是基于有限的工作,这些工作本质上是经验性的,没有足够而健全的数学基础。 ud考虑到这一点,在这项研究工作中进行了尝试,以研究涵盖印度大部分煤田的不同等级的49个煤样。用于评估煤自燃趋势的实验/分析方法为:近似分析,极限分析,岩石学分析,交点温度,Olpinski指数,可燃性温度,湿氧化电位分析和差热分析(​​DTA)。在内在属性的参数与磁化率指标之间进行了统计回归分析,并且将最佳相关参数用作软计算模型的输入。进一步采用了不同的人工神经网络模型,例如多层感知器网络(MLP),功能链接人工神经网络(FLANN)和径向基函数(RBF),来评估印度煤炭的潜在火灾隐患。 ud基于经过严格统计分析后选择作为输入的最佳相关参数(最终分析),设计了合适的人工神经网络火灾风险预测模型。在所有拟议的人工神经网络模型成功应用之后,基于相对误差的平均幅度(MMRE)作为性能参数,模型性能曲线和皮尔逊残留盒形图进行了比较研究。从提出的人工神经网络技术中,可以看出,相对于MLP和FLANN,RBF模型可以更好地预测Szb火灾风险。所提出的RBF网络模型的结果与所调查的印度煤炭的现场记录非常吻合,可以帮助矿山管理层提前采取适当的策略和有效的行动计划,以防止火灾的发生和蔓延。 ud

著录项

  • 作者

    Nimaje Devidas S;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号