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Demand Forecasting of Anti-Aircraft Missile Spare Parts Using Neural Network

机译:基于神经网络的防空导弹备件需求预测

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One of the major hurdles today is maintaining the right amount of stock keeping units since it may lead to under utilization or over utilization. Spare parts play a very vital role in any inventory or industrial companies. The importance of spare parts can be identified by their sizeable amount and their impact on business operations. One of the major industries today is aircraft industry which includes some of the most fundamental factors like increasing terrorist activities across the world, rising request for technologically robust anti-aircraft missiles and the growing defense funds of emerging countries. Inventory needs to keep an eye on these activities so as to estimate the future consumption. In this study, the dataset used is that of Vietnam War Bombing Operations .The proposed modeling involved- the aircraft name along with its unit of issue, how many spare parts are exhausted and how many are remaining. This helps in finding out the quantity required for demanding the exhausted spare parts by maintaining the budget .The trial about Multi-layer Perceptron (MLP) and XGBoost demonstrates effectiveness in terms of time and memory which is the ultimate aim to improve the precision in terms of demand accuracy.
机译:当今的主要障碍之一是保持适当数量的库存单位,因为这可能导致利用率不足或利用率过度。备件在任何库存或工业公司中都起着至关重要的作用。备件的重要性可以通过其可观数量及其对业务运营的影响来确定。飞机工业是当今的主要产业之一,其中包括一些最基本的因素,例如全世界恐怖活动的增加,对技术上强大的防空导弹的需求不断增加以及新兴国家的国防资金不断增长。库存需要密切关注这些活动,以便估计未来的消费量。在本研究中,使用的数据集是越南战争炸弹行动的数据集。所提议的建模涉及-飞机名称及其发布单位,耗尽了多少零件以及剩余多少。这有助于通过维持预算来找到需要用尽备件的数量。有关多层感知器(MLP)和XGBoost的试验证明了时间和内存方面的有效性,这是提高精度的最终目的。需求准确性。

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