Semantic Sensor Network Ontology based Decision Support System for Forest Fire Management

Ritesh Chandra, Sonali Agarwal, Navjot Singh
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引用次数: 11

Abstract

The forests are significant assets for every country. When it gets destroyed, it may negatively impact the environment, and forest fire is one of the primary causes. Fire weather indices are widely used to measure fire danger and are used to issue bushfire warnings. It can also be used to predict the demand for emergency management resources. Sensor networks have grown in popularity in data collection and processing capabilities for a variety of applications in industries such as medical, environmental monitoring, home automation etc. Semantic sensor networks can collect various climatic circumstances like wind speed, temperature, and relative humidity. However, estimating fire weather indices is challenging due to the various issues involved in processing the data streams generated by the sensors. Hence, the importance of forest fire detection has increased day by day. The underlying Semantic Sensor Network (SSN) ontologies are built to allow developers to create rules for calculating fire weather indices and also the convert dataset into Resource Description Framework (RDF). This research describes the various steps involved in developing rules for calculating fire weather indices. Besides, this work presents a Web-based mapping interface to help users visualize the changes in fire weather indices over time. With the help of the inference rule, it designed a decision support system using the SSN ontology and query on it through SPARQL. The proposed fire management system acts according to the situation, supports reasoning and the general semantics of the open-world followed by all the ontologies.
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基于语义传感器网络本体的森林火灾管理决策支持系统
森林是每个国家的重要资产。当它被破坏时,它可能会对环境产生负面影响,而森林火灾是主要原因之一。火灾天气指数被广泛用于测量火灾危险,并用于发出丛林火灾警告。它也可以用来预测应急管理资源的需求。传感器网络在数据收集和处理能力方面越来越受欢迎,适用于医疗、环境监测、家庭自动化等行业的各种应用。语义传感器网络可以收集各种气候情况,如风速、温度和相对湿度。然而,由于处理传感器产生的数据流所涉及的各种问题,估计火灾天气指数是具有挑战性的。因此,森林火灾探测的重要性日益增加。底层语义传感器网络(SSN)本体的构建允许开发人员创建计算火灾天气指数的规则,并将数据集转换为资源描述框架(RDF)。本研究描述了制定计算火灾天气指数的规则所涉及的各个步骤。此外,这项工作提供了一个基于网络的绘图界面,帮助用户可视化火灾天气指数随时间的变化。在推理规则的帮助下,设计了一个基于SSN本体的决策支持系统,并通过SPARQL对其进行查询。所提出的火灾管理系统根据情况行动,支持所有本体遵循的开放世界的推理和一般语义。
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