A Review of Slope Stability Analysis Using Artificial Neural Networks
Review: Analisis Kestabilan Lereng Menggunakan Artificial Neural Network
Abstrak
Beberapa tahun terakhir, pendekatan jaringan syaraf tiruan atau artificial neural network (ANN) telah berhasil digunakan untuk pemodelan hampir semua aspek masalah rekayasa geoteknik terutama dalam kestabilan lereng. Berdasarkan komparasi yang dilakukan makalah ini menunjukkan bahwa ANN memiliki banyak keuntungan jika masalah tidak dapat diselesaikan secara matematis serta dapat menangani kumpulan data yang banyak. Ada berbagai algoritma cerdas tersedia, oleh karenanya ANN bukanlah konsep baru. Namun, kemampuan ANN dalam memecahkan masalah rekayasa geoteknik yang kompleks (seperti yang ditemukan dalam analisis kestabilan lereng) merupakan keunggulan utamanya. Sehingga dalam makalah ini bertujuan untuk memberikan gambaran mengenai pemodelan artificial neural network dalam analisis kestabilan lereng sebagai bagian dari permasalahan rekayasa geoteknik serta arah peneltian ANN yang perlu mendapat perhatian lebih lanjut di masa depan.
Referensi
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