NAVIGASI GPS DENGAN REMINDER WAKTU SHOLAT MENGGUNAKAN ALGORITMA A* DENGAN PERTIMBANGAN JARAK, INDEX KEMACETAN DAN INDEX PREFERENSI MASJID : STUDI KASUS DARI CILEDUG KE SENAYAN
Abstract
Jumlah kendaraan bermotor di kota besar terus meningkat yang mengakibatkan tingginya tingkat kemacetan di kota besar. Salah satu indikator meningkatnya tingkat kemacetan tersebut adalah tingginya aktifitas dari warga di kota besar. Seperti yang diketahui bahwa kebanyakan para pekerja yang bekerja di kota besar berasal dari kota – kota disekitar kota besar tersebut. Jakarta sebagai Ibu Kota memiliki tingkat kemacetan dan kepadatan aktifitas yang tinggi. Sayangnya di tengah kondisi seperti itu menyebabkan umat muslim di Jakarta kesulitan dalam menjalankan kewajibannya beribadah sholat 5 waktu. Untuk itulah diperlukan adanya reminder waktu sholat yang dapat memfasilitasi umat muslim agar dapat menjalankan kewajibannya dengan baik. Berdasarkan penjelasan sebelumnya, maka penelitian ini akan fokus didalam mengembangkan sistem navigasi GPS berbasis reminder waktu sholat dengan memanfaatkan algoritma A* untuk mendapatkan lokasi masjid terbaik, dengan parameter jarak, index kemacetan dan index preferensi masjid. Hasil penelitian ini menghasilkan sebuah sistem navigasi GPS dengan reminder waktu sholat yang memberikan lokasi masjid terbaik dan memandu pengguna ke lokasi masjid tersebut.License and Copyright Agreement
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