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首页> 外文期刊>Neural Network World >THE ARTIFICIAL BEE COLONY ALGORITHM IN TRAINING ARTIFICIAL NEURAL NETWORK FOR OIL SPILL DETECTION
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THE ARTIFICIAL BEE COLONY ALGORITHM IN TRAINING ARTIFICIAL NEURAL NETWORK FOR OIL SPILL DETECTION

机译:人工神经网络训练的溢油检测人工蜂群算法

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Nowadays, remote .sensing technology is being used as an essential tool for monitoring and detecting oil spills to take precautions and to prevent the damages to the marine environment. As an important branch of remote sensing, satellite based synthetic aperture radar imagery (SAR) is the most effective way to accomplish these tasks. Since a marine surface with oil spill seems as a dark object because of much lower backscattered energy, the main problem is to recognize and differentiate the dark objects of oil spills from others to be formed by oceanographic and atmospheric conditions. In this study, Radarsat-1 images covering Lebanese coasts were employed for oil spill detection. For this purpose, a powerful classifier, Artificial Neural Network Multilayer Perceptron (ANN MLP) was used. As the original contribution of the paper, the network was trained by a novel heuristic optimization algorithm known as Artificial Bee Colony (ABC) method besides the conventional Backpropagation (BP) and Levenberg-Marquardt (LM) learning algorithms. A comparison and evaluation of different network training algorithms regarding reliability of detection and robustness show that for this problem best result is achieved with the Artificial Bee Colony algorithm (ABC).
机译:如今,遥感技术已成为监视和检测溢油的基本工具,以采取预防措施并防止对海洋环境的破坏。作为遥感的重要分支,基于卫星的合成孔径雷达图像(SAR)是完成这些任务的最有效方法。由于具有较低的反向散射能量,带有溢油的海洋表面似乎是黑色物体,因此主要问题是识别和区分溢油的黑色物体与其他海洋和大气条件形成的溢油物体。在这项研究中,覆盖黎巴嫩海岸的Radarsat-1图像被用于漏油检测。为此,使用了功能强大的分类器人工神经网络多层感知器(ANN MLP)。作为论文的最初贡献,除了传统的反向传播(BP)和Levenberg-Marquardt(LM)学习算法以外,该网络还通过一种新颖的启发式优化算法(称为人工蜂群(ABC)方法)进行了训练。对有关检测可靠性和鲁棒性的不同网络训练算法的比较和评估表明,针对此问题,使用人工蜂群算法(ABC)可获得最佳结果。

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