Coastal Vulnerability Classification of the North Coast of Java using K-Nearest Neighbor

Ayu Novitasari Saputri, Arita Witanti
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Abstract

Indonesia has many beaches that attract the attention of tourists, including the north coast of Java. In addition to visual appeal, there are also other potentials such as settlements, agriculture, fisheries, ports, ponds, and other resources. However, there is also a threat to coastal damage caused by, among other things, wave action, tides, abrasion, and tidal flooding. For this reason, in developing coastal areas on the north coast of Java, it is necessary to consider the potential for damage to the coast based on the physical condition of the coast and a system that can classify the vulnerability levels of coastal areas is also needed. The Coastal Vulnerability Index (CVI) can be determined and classified using for example the Gornitz formula, or using data driven model and machine learning based on the coastal parameter data. This study demonstrates how the K-Nearest Neighbor, also known as K-NN algorithm, can be used to classify the level of vulnerability of the coastal areas. This study uses 290 points (locations) along the northern coasts of Java. The parameters that determine the coastal vulnerability are mean sea level (MSL), mean significant wave height (MSWH), mean tidal range (MTR), shoreline changes, landforms and slopes. In this study, the classification of coastal vulnerability levels is classified into 4, namely “low, moderate, high and very high”. The K-NN system uses 80% of the data for training and 20% for testing, with the value of K = 1 to 10. The test results show that the K-NN method is capable of classifying the vulnerability levels of the North Coast of Java. From the test results for values of K = 1 to K = 10, and by randomizing the training data and test data gives an average accuracy rate of 86.21% to 97.13%, with the best K value obtained at K = 2.
基于k近邻的爪哇北部海岸脆弱性分类
印度尼西亚有许多吸引游客注意的海滩,包括爪哇北部海岸。除了视觉吸引力外,还有其他潜力,如定居点、农业、渔业、港口、池塘和其他资源。然而,除了其他因素外,波浪作用、潮汐、磨损和潮汐洪水也对海岸造成了威胁。因此,在开发爪哇北部沿海地区时,有必要根据海岸的物理条件考虑对海岸的潜在破坏,并需要一个可以对沿海地区的脆弱程度进行分类的系统。沿海脆弱性指数(CVI)可以使用Gornitz公式或基于沿海参数数据的数据驱动模型和机器学习来确定和分类。本研究展示了如何使用k -最近邻算法(也称为K-NN算法)对沿海地区的脆弱性等级进行分类。这项研究使用了爪哇北部海岸的290个点(地点)。决定海岸带脆弱性的参数有平均海平面(MSL)、平均有效波高(MSWH)、平均潮差(MTR)、岸线变化、地貌和坡度。本研究将沿海脆弱性等级划分为4级,即“低、中、高、极高”。K- nn系统使用80%的数据用于训练,20%用于测试,K的值为1到10。测试结果表明,K-NN方法能够对爪哇北海岸的漏洞级别进行分类。从K = 1 ~ K = 10的测试结果来看,通过对训练数据和测试数据进行随机化,平均准确率为86.21% ~ 97.13%,K值在K = 2时达到最佳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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