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Multi-Sensor Fire Detector based on Trend Predictive Neural Network

机译:基于趋势预测神经网络的多传感器防火探测器

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In this paper, we propose a Trend Predictive Neural Network (TPNN) model, which uses the sensor data and the trend of that data in order to classify the fire situation. We implemented TPNN for data of multi-sensor fire detector with 6 sensors to detect 7 inputs. We test the performance of the TPNN model by using the multi-sensor dataset, which is collected within this study. Our results show that the TPNN model is a fast and accurate model, whose execution time is 0.0132 seconds. Furthermore, TPNN decreases both the false positive and false negative alarm rates to half of the results of the multi-layer perceptron model.
机译:在本文中,我们提出了一种趋势预测神经网络(TPNN)模型,它使用传感器数据和该数据的趋势来分类火灾情况。我们为多传感器火探测器数据实施了TPNN,具有6个传感器来检测7个输入。我们使用多传感器数据集测试TPNN模型的性能,该数据集将在本研究中收集。我们的结果表明,TPNN模型是一种快速准确的模型,其执行时间为0.0132秒。此外,TPNN将假阳性和假阴性报警速率降低到多层Perceptron模型的结果的一半。

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