MOBIL AĞLARDA LOKASYON TAHMİNİ

Bu makale, Baz İstasyonu (BTS) verilerini kullanarak Mobil ağlarda konum tahminini raporlamaktadır. İşlenen veriler sahadan TA (Timing Advance), RSRP (Reference Signal Received Power) ve RSRQ (Reference Signal Received Quality) ölçümleri olarak toplanmıştır. Ölçümlere karşılık gelen Global Konumlandırma Sistemi (GPS) verileri de toplanmıştır. Lokasyon tahminleri gerçek lokasyonla (GPS) karşılaştırılmıştır. Baz istasyonunun hizmet kalitesini artırmak amaçlanmıştır. Bu makale “Mobil Ağlarda Lokasyon Tahmini” başlıklı tezden üretilmiştir.

LOCATION ESTIMATION ON MOBILE NETWORKS

This paper reports the location estimation on Mobile networks using Base Station (BTS) data. Processed data have been collected from the field as TA (Timing Advance), RSRP (Reference Signal Received Power), and RSRQ (Reference Signal Received Quality) measurements. We also gathered the corresponding Global Positioning System (GPS) to the measurements. Location estimation results compared to the actual location. We gathered the accurate sites of the users to increase the service quality of the BTS. This article was produced from the thesis titled “Location Estimation on Mobile Networks.”

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