Penelitian ini bertujuan untuk menganalisis efisiensi pemasaran kopra di Kecamatan Banggae Kabupaten Majene. Populasi dalam penelitian ini yaitu pengrajin kopra dimana pengambilan sampel dilakukan menggunakan snowball sampling. Penelitian ini menggunakan data primer yang bersumber dari pelaku pemasaran kopra dan data sekunder bersumber dari Badan Pusat Statistik. Metode analisis data kuantitatif digunakan untuk mengukur efisiensi pemasaran di setiap saluran pemasaran kopra. Hasil penelitian menunjukkan bahwa saluran pemasaran pertama dan kedua memiliki kategori efisien dalam pemasaran kopra yang diukur melalui tingkat efisiensi sebesar 17,7% saluran pemasaran pertama dan sebesar 21,1% saluran pemasaran kedua.
Tsunamis are one of the most frequent deadly natural disasters in Indonesia. The tsunami came suddenly and destroyed everything in their path. Reporting from the BNPB website, a tsunami consists of a series of ocean waves capable of traveling at speeds reaching more than 900 kilometers per hour or more in the middle of the sea. Tsunamis are triggered by several factors, namely earthquakes and debris on the seabed, or due to volcanic eruptions at sea. No technology can predict exactly when a tsunami will occur. Therefore the mitigation process is needed as preparation to face a disaster. The geographical position of the southern coast of Blitar Regency is recorded as a tsunami-prone area due to the shift in the Indoaustralia and Euroasia plates and directly adjacent to the Indian Ocean. In this study, an analysis of the risk level of a tsunami disaster in the coastal area of Blitar Regency will be carried out as the first step for disaster mitigation to minimize the occurrence of casualties using a grid-based analysis. The process is carried out using spatial data in the form of points, which are then interpolated so that the new points are obtained. Risk analysis is obtained by three parameters, namely hazard parameters, vulnerability parameters, and capacity parameters. The area affected by the tsunami hazard in the Blitar Regency spreads over 14 villages in Blitar Regency. The area affected by the tsunami in the 10m-height model is 655.76 hectares. The village with the largest inundation area is located in Sumbersih Village with an area of 97.52 hectares. In calculating the level of vulnerability, it is found that the level of vulnerability in the coastal area of Blitar Regency is in the medium class. Furthermore, the risk analysis shows that the area at risk of tsunami in the run-up model is 10 meters covering an area of 655.76 hectares, a low-risk area of 74.69 hectares, a moderate risk area of 211.44 hectares, and a high-risk area of 369.62 hectares. Hectares. In Bakung District, there are no areas with a high level of risk.
Lovina Beach is a famous tourist attraction on the northern island of Bali. This beach is somewhat unique because it has an exciting dolphin viewing attraction. However, some lack elements on-site reduce the value of beach tourism, such as unattractive design, many idle facilities, empty spaces, and puddle. This study aims to analyze and redesign the beach based on landscape engineering to overcome sustainability. The design stage consists of project acceptance, research and analysis, design, and construction drawings combined with the scoring system of the hydro-oceanographic analysis. The analysis aimed to identify the value of coastal vulnerability indexes. The results of this study are site plan concepts, perspective drawings, cut images, planting plans, and detailed engineering designs, which is formed on the results of analysis and synthesis, and preferences score. The design of this coastal waterscape will be used as a recommendation to the beach management.
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