首页> 外文期刊>Scientia Africana: An International Journal of Pure & Applied Sciences >STOCHASTIC MODEL FOR THE PREDICTION OF SHORT TIME NUMBER OF FIRE ACCIDENT OCCURRENCE IN NIGER STATE USING VITERBI ALGORITHM
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STOCHASTIC MODEL FOR THE PREDICTION OF SHORT TIME NUMBER OF FIRE ACCIDENT OCCURRENCE IN NIGER STATE USING VITERBI ALGORITHM

机译:使用VITERBI算法预测尼日尔国家发生的短时间发生事故发生的随机模型

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摘要

In this paper, we look into ways by which fire outbreak (accident) can be suppressed. A stochastic model that predicts the number of fire accident occurrence in Niger State using Viterbi Algorithm is presented. A three-State stochastic model was formulated using the principle of Markov and each state of the model has four possible observations. The parameters of the model were estimated using the fire accident data collected from the archive of Niger State Fire Service, after which the model was trained using Baum-welch Algorithm to attend maximum likelihood. The Validity test for the model recorded 75% accuracy for short time prediction and shows 50% accuracy for long time prediction. This indicates that the model is more reliable and dependable for short time prediction.Information for this study could serve as a guide to the government in policy formulation that might assist in curbing the number of fire accident occurrences in Niger State.
机译:在本文中,我们研究了可以抑制爆发(事故)的方式。 提出了一种使用Viterbi算法预测尼日尔状态发生火灾事故数量的随机模型。 使用马尔可夫的原理制定了三态随机模型,该模型的每个状态都有四个可能的观察结果。 使用尼日尔州消防档案库收集的火灾事故数据估算了模型的参数,此后,使用Baum-Welch算法对模型进行了培训,以参加最大可能性。 该模型的有效性测试在短时间预测中记录了75%的精度,并且长期预测显示了50%的精度。 这表明该模型在短时间预测中更可靠和可靠。这项研究的信息可以作为政府制定的政府指南,这可能有助于抑制尼日尔州的火灾事故发生的数量。

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