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Enemy Location Prediction in Naval Combat Using Deep Learning

机译:深入学习海军战斗中的敌人位置预测

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The immensely complex realm of naval warfare presents challenges for which machine learning is uniquely suited. In this paper, we present a machine learning model to predict the location of unseen enemy ships in real time, based on the current known positions of other ships on the battlefield. More broadly, this research seeks to validate the ability of basic machine learning algorithms to make meaningful classifications and predictions of simulated adversarial naval behavior. Using gameplay data from World of Warships, we deployed an artificial neural network (ANN) model and a Random Forest model to serve as prediction engines that update as the battle progresses, overlaying probabilities over the battlefield map indicating the likelihood of the unseen ship being at each location. The models were trained and tested on gameplay data from a World of Warships tournament in which former naval officers served as commanders of competing fleets. This tournament structure ensured cohesive and coordinated naval fleet behavior, yielding data similar to that seen in real-world naval combat and increasing the applicability of our model. Both the Random Forest and ANN model were successful in their predictive capabilities, with the ANN proving to be the best method.
机译:海军战争的非常复杂的境界呈现了机器学习唯一适合的挑战。在本文中,我们展示了一种机器学习模型,以预测未经敌人船只的位置实时地,基于战场上的其他船舶的当前已知位置。更广泛地,这项研究旨在验证基本机器学习算法的能力,以对模拟的对抗海军行为进行有意义的分类和预测。使用从战舰世界的游戏数据,我们部署了一个人工神经网络(ANN)模型和随机森林模型,作为预测发动机,以便更新随着战斗的进展,覆盖战场地图的覆盖概率,表明了看不见的船舶的可能性每个位置。这些模型培训并在来自前海军官员作为竞争船队指挥官的战舰锦标赛的游戏数据上进行培训和测试。该锦标赛结构确保了凝聚力和协调的海军舰队行为,产生了与现实世界海军战斗中所见的数据,并提高了我们模型的适用性。随机森林和ANN模型都在预测性能力方面取得了成功,并证明是最好的方法。

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