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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >PREDICTION BASED WORKLOAD PERFORMANCE EVALUATION FOR DISASTER MANAGEMENT SPATIAL DATABASE
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PREDICTION BASED WORKLOAD PERFORMANCE EVALUATION FOR DISASTER MANAGEMENT SPATIAL DATABASE

机译:灾害管理空间数据库基于预测的工作负载性能评估

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This paper discusses a prediction based workload performance evaluation implementation during Disaster Management, especially at the response phase, to handle large spatial data in the event of an eruption of the Merapi volcano in Indonesia. Complexity associated with a large spatial database are not the same with the conventional database. This implies that in coming complex work loads are difficult to be handled by human from which needs longer processing time and may lead to failure and undernourishment. Based on incoming workload, this study is intended to predict the associated workload into OLTP and DSS workload performance types. From the SQL statements, it is clear that the DBMS can obtain and record the process, measure the analysed performances and the workload classifier in the form of DBMS snapshots. The Case-Based Reasoning (CBR) optimised with Hash Search Technique has been adopted in this study to evaluate and predict the workload performance of PostgreSQL. It has been proven that the proposed CBR using Hash Search technique has resulted in acceptable prediction of the accuracy measurement than other machine learning algorithm like Neural Network and Support Vector Machine. Besides, the results of the evaluation using confusion matrix has resulted in very good accuracy as well as improvement in execution time. Additionally, the results of the study indicated that the prediction model for workload performance evaluation using CBR which is optimised by Hash Search technique for determining workload data on shortest path analysis via the employment of Dijkstra algorithm. It could be useful for the prediction of the incoming workload based on the status of the predetermined DBMS parameters. In this way, information is delivered to DBMS hence ensuring incoming workload information that is very crucial to determine the smooth works of PostgreSQL.
机译:本文讨论了在灾难管理期间(尤其是在响应阶段)基于预测的工作负载性能评估实施,以在印度尼西亚默拉皮火山喷发时处理大型空间数据。与大型空间数据库相关联的复杂性与常规数据库不同。这意味着,将来很难由人来处理复杂的工作负荷,从而需要更长的处理时间,并可能导致失败和营养不良。基于传入的工作负载,本研究旨在将相关的工作负载预测为OLTP和DSS工作负载性能类型。从SQL语句中可以清楚地看出,DBMS可以获取并记录该过程,以DBMS快照的形式衡量所分析的性能和工作负载分类器。本研究采用了通过哈希搜索技术优化的基于案例的推理(CBR)来评估和预测PostgreSQL的工作负载性能。事实证明,与其他机器学习算法(如神经网络和支持向量机)相比,使用哈希搜索技术提出的CBR可以对精度测量进行可接受的预测。此外,使用混淆矩阵的评估结果不仅具有非常好的准确性,而且缩短了执行时间。此外,研究结果表明,使用哈希搜索技术优化了使用CBR的工作负载性能评估的预测模型,该模型通过使用Dijkstra算法确定最短路径分析中的工作负载数据。对于基于预定DBMS参数状态的传入工作负载的预测可能很有用。通过这种方式,信息被传递到DBMS,从而确保传入的工作负载信息对于确定PostgreSQL的顺利运行至关重要。

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