Perumusan Strategi Pengendalian Kehilangan Air Berbasis Pola Spasial Pada Jaringan Distribusi Air Bersih Kawasan Industri PIER
DOI:
https://doi.org/10.56071/deteksi.v10i2.1340Keywords:
kehilangan air, pola titik spasial, jaringan distribusi air bersih, kawasan industri PIERAbstract
Pengendalian kehilangan air membutuhkan pemahaman yang mendalam tentang faktor-faktor yang mempengaruhi. Strategi pengendalian kehilangan air harus dilakukan dengan cermat dan terarah untuk menjaga keandalan serta efisiensi sistem distribusi air bersih. Dengan memanfaatkan data dan analisis spasial, strategi ini dapat mengidentifikasi pola kebocoran pipa yang terjadi di titik-titik tertentu pada sebuah kawasan industri. Penerapan strategi ini diharapkan dapat meningkatkan efisiensi operasional jaringan distribusi air bersih, mengurangi kerugian akibat kehilangan air, dan meningkatkan kualitas layanan bagi pelanggan di kawasan industri PIER. Penelitian ini bertujuan untuk melengkapi pemahaman tentang pola kebocoran pipa distribusi air bersih dan menetapkan strategi dalam pengendalian kehilangan air pada jaringan distribusi air bersih di kawasan industri PIER. Analisis pola titik spasial mendapati bahwa terdapat dua klaster intensitas dari persebaran lokasi kebocoran pipa. Hal ini mempengaruhi perumusan strategi dengan mengintegrasikan beberapa aspek, antara lain aspek pemantauan, inovasi, dan identifikasi risiko
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