Land cover change analysis of buffer areas in New Capital City of Nusantara, Indonesia: A cellular automata approach on satellite imageries data

Maria Shawna Cinnamon Claire, Salwa Rizqina Putri, Arie Wahyu Wijayanto
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Abstract

The proposed plan to move Indonesia's capital city to the New Capital City of Nusantara in East Kalimantan Province undoubtedly requires careful efforts to ensure food supply for the population. Population migration to the new capital may pose a food security challenge. To address this fundamental issue, one of the most crucial approaches is to establish buffer areas that can support the food needs of the new capital. The currently existing official Area Sampling Frame survey conducted by the government to assess food vulnerability faced several limitations, including weather conditions, field terrain variations, and high cost. In this study, we propose the utilization of remote sensing satellite imagery data in buffer areas to analyze changes and predict future land cover, which can provide valuable data for assessing food availability. We investigate the integration of a Cellular Automata method with the two most popular analytical methods of classical Logistic Regression and data-driven Artificial Neural Networks, known as CA-LR and CA-ANN, to identify and map land cover changes in the new capital buffer zones. Our findings reveal that both combined methods, CA-LR and CA-ANN, yield fairly promising results, with correctness and kappa statistic values exceeding 80%. Prediction results indicate that buffer areas are predominantly covered by trees, while built-up areas are still limited. The flooded vegetation cover, including rice fields, is predicted to decrease by 2024. This should be a matter of concern for stakeholders, considering the construction of the new capital city is still ongoing and the number of migrants is expected to keep rising.
印度尼西亚新首都努桑达拉缓冲区土地覆被变化分析:基于卫星成像数据的蜂窝自动机方法
拟议中的将印度尼西亚首都迁往东加里曼丹省新首都努山塔拉市的计划无疑需要认真努力,以确保人口的粮食供应。向新首都迁移的人口可能会对粮食安全构成挑战。要解决这一根本问题,最关键的方法之一是建立缓冲区,以满足新首都的粮食需求。目前,政府为评估粮食脆弱性而开展的官方地区抽样框架调查面临一些限制,包括天气条件、实地地形变化和高成本。在本研究中,我们建议利用缓冲区的遥感卫星图像数据来分析变化并预测未来的土地覆盖情况,从而为评估粮食供应情况提供有价值的数据。我们研究了如何将细胞自动机方法与经典逻辑回归和数据驱动人工神经网络这两种最流行的分析方法(即 CA-LR 和 CA-ANN)相结合,以识别和绘制新首都缓冲区的土地覆被变化图。我们的研究结果表明,CA-LR 和 CA-ANN 这两种组合方法都取得了相当不错的结果,正确率和卡帕统计值都超过了 80%。预测结果表明,缓冲区主要被树木覆盖,而建筑区仍然有限。预计到 2024 年,包括稻田在内的洪涝植被覆盖面积将减少。考虑到新首都的建设仍在进行中,而且移民人数预计会不断增加,这应该引起利益相关者的关注。
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