In this study, the performance of three different self organization feature map (SOFM) network models denoted as SOFM1, SOFM2, and SOFM3 having neighborhood shapes, namely, SquareKohonenful, LineKohonenful, and Diamond-Kohenenful, respectively, to predict the critical factor of safety (F-s) of a widely-used artificial slope subjected to earthquake forces was investigated and compared. For this purpose, the reported data sets by Erzin and Cetin (2012) [7], including the minimum (critical) F-s values of the artificial slope calculated by using the simplified Bishop method, were utilized in the development of the SOFM models. The results obtained from the SOFM models were compared with those obtained from the calculations. It is found that the...
A landslide susceptibility map, which describes the quantitative relationship between known landslid...
It may not be possible to collect adequate records of strong ground motions in a short period of tim...
The evaluation and precise prediction of safety factor (SF) of slopes can be useful in designing/ana...
AbstractThis study deals with the development of Artificial Neural Network (ANN) and Multiple Regres...
One of the main concerns in geotechnical engineering is slope stability prediction during the earthq...
ABSTRACT: In recent times, the sediment disasters, such as slope failures, debris flows, and landsli...
In this paper, a neuro particle-based optimization of the artificial neural network (ANN) is investi...
The surface of the earth is very rarely flat and so there are slopes nearly everywhere. The loads on...
The design of earthen embankments is quite often carried out with the use of stability number charts...
In present paper, authors develop a model for estimation of earth slope stability based on the artif...
To enable assess slope stability problems efficiently, various machine learning algorithms have been...
Slope stability analysis is one of the most important problems in geotechnical engineering. The deve...
ผลงานวิชาการคณาจารย์มหาวิทยาลัยเทคโนโลยีสุรนารีThe Yudonghe landslide, located in western Hubei Prov...
Susceptibility assessment of areas prone to landsliding remains one of the most useful approaches in...
In the past decade, advances in machine learning (ML) techniques have resulted in developing sophist...
A landslide susceptibility map, which describes the quantitative relationship between known landslid...
It may not be possible to collect adequate records of strong ground motions in a short period of tim...
The evaluation and precise prediction of safety factor (SF) of slopes can be useful in designing/ana...
AbstractThis study deals with the development of Artificial Neural Network (ANN) and Multiple Regres...
One of the main concerns in geotechnical engineering is slope stability prediction during the earthq...
ABSTRACT: In recent times, the sediment disasters, such as slope failures, debris flows, and landsli...
In this paper, a neuro particle-based optimization of the artificial neural network (ANN) is investi...
The surface of the earth is very rarely flat and so there are slopes nearly everywhere. The loads on...
The design of earthen embankments is quite often carried out with the use of stability number charts...
In present paper, authors develop a model for estimation of earth slope stability based on the artif...
To enable assess slope stability problems efficiently, various machine learning algorithms have been...
Slope stability analysis is one of the most important problems in geotechnical engineering. The deve...
ผลงานวิชาการคณาจารย์มหาวิทยาลัยเทคโนโลยีสุรนารีThe Yudonghe landslide, located in western Hubei Prov...
Susceptibility assessment of areas prone to landsliding remains one of the most useful approaches in...
In the past decade, advances in machine learning (ML) techniques have resulted in developing sophist...
A landslide susceptibility map, which describes the quantitative relationship between known landslid...
It may not be possible to collect adequate records of strong ground motions in a short period of tim...
The evaluation and precise prediction of safety factor (SF) of slopes can be useful in designing/ana...