FireXnet: an explainable AI-based tailored deep learning model for wildfire detection on resource-constrained devices

IF 3.6 3区 环境科学与生态学 Q1 ECOLOGY Fire Ecology Pub Date : 2023-09-20 DOI:10.1186/s42408-023-00216-0
Khubab Ahmad, Muhammad Shahbaz Khan, Fawad Ahmed, Maha Driss, Wadii Boulila, Abdulwahab Alazeb, Mohammad Alsulami, Mohammed S. Alshehri, Yazeed Yasin Ghadi, Jawad Ahmad
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引用次数: 1

Abstract

Abstract Background Forests cover nearly one-third of the Earth’s land and are some of our most biodiverse ecosystems. Due to climate change, these essential habitats are endangered by increasing wildfires. Wildfires are not just a risk to the environment, but they also pose public health risks. Given these issues, there is an indispensable need for efficient and early detection methods. Conventional detection approaches fall short due to spatial limitations and manual feature engineering, which calls for the exploration and development of data-driven deep learning solutions. This paper, in this regard, proposes 'FireXnet', a tailored deep learning model designed for improved efficiency and accuracy in wildfire detection. FireXnet is tailored to have a lightweight architecture that exhibits high accuracy with significantly less training and testing time. It contains considerably reduced trainable and non-trainable parameters, which makes it suitable for resource-constrained devices. To make the FireXnet model visually explainable and trustable, a powerful explainable artificial intelligence (AI) tool, SHAP (SHapley Additive exPlanations) has been incorporated. It interprets FireXnet’s decisions by computing the contribution of each feature to the prediction. Furthermore, the performance of FireXnet is compared against five pre-trained models — VGG16, InceptionResNetV2, InceptionV3, DenseNet201, and MobileNetV2 — to benchmark its efficiency. For a fair comparison, transfer learning and fine-tuning have been applied to the aforementioned models to retrain the models on our dataset. Results The test accuracy of the proposed FireXnet model is 98.42%, which is greater than all other models used for comparison. Furthermore, results of reliability parameters confirm the model’s reliability, i.e., a confidence interval of [0.97, 1.00] validates the certainty of the proposed model’s estimates and a Cohen’s kappa coefficient of 0.98 proves that decisions of FireXnet are in considerable accordance with the given data. Conclusion The integration of the robust feature extraction of FireXnet with the transparency of explainable AI using SHAP enhances the model’s interpretability and allows for the identification of key characteristics triggering wildfire detections. Extensive experimentation reveals that in addition to being accurate, FireXnet has reduced computational complexity due to considerably fewer training and non-training parameters and has significantly fewer training and testing times.
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FireXnet:一个可解释的基于人工智能的定制深度学习模型,用于在资源受限的设备上进行野火检测
森林覆盖了地球近三分之一的土地,是我们最具生物多样性的生态系统之一。由于气候变化,这些重要的栖息地受到越来越多的野火的威胁。野火不仅对环境构成威胁,还对公众健康构成威胁。鉴于这些问题,迫切需要有效和早期的检测方法。由于空间限制和人工特征工程,传统的检测方法不足,这需要探索和开发数据驱动的深度学习解决方案。在这方面,本文提出了“FireXnet”,这是一种定制的深度学习模型,旨在提高野火探测的效率和准确性。FireXnet是专为具有轻量级架构而量身定制的,该架构可以在显著减少培训和测试时间的情况下显示出高准确性。它包含了相当少的可训练参数和不可训练参数,这使得它适用于资源受限的设备。为了使FireXnet模型在视觉上可解释和可信,一个强大的可解释的人工智能(AI)工具,SHAP (SHapley Additive explaines)已被纳入。它通过计算每个特性对预测的贡献来解释FireXnet的决策。此外,FireXnet的性能与五个预训练模型(VGG16, InceptionResNetV2, InceptionV3, DenseNet201和MobileNetV2)进行了比较,以基准测试其效率。为了公平比较,迁移学习和微调已应用于上述模型,以重新训练我们数据集上的模型。结果提出的FireXnet模型的测试准确率为98.42%,高于所有其他用于比较的模型。此外,可靠性参数的结果证实了模型的可靠性,即置信区间[0.97,1.00]验证了所提出模型估计的确定性,Cohen 's kappa系数为0.98证明FireXnet的决策与给定数据相当一致。使用SHAP将FireXnet的鲁棒特征提取与可解释AI的透明度相结合,增强了模型的可解释性,并允许识别触发野火检测的关键特征。大量的实验表明,除了准确性之外,FireXnet还降低了计算复杂性,因为训练和非训练参数大大减少,训练和测试时间也大大减少。
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来源期刊
Fire Ecology
Fire Ecology ECOLOGY-FORESTRY
CiteScore
6.20
自引率
7.80%
发文量
24
审稿时长
20 weeks
期刊介绍: Fire Ecology is the international scientific journal supported by the Association for Fire Ecology. Fire Ecology publishes peer-reviewed articles on all ecological and management aspects relating to wildland fire. We welcome submissions on topics that include a broad range of research on the ecological relationships of fire to its environment, including, but not limited to: Ecology (physical and biological fire effects, fire regimes, etc.) Social science (geography, sociology, anthropology, etc.) Fuel Fire science and modeling Planning and risk management Law and policy Fire management Inter- or cross-disciplinary fire-related topics Technology transfer products.
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