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Use of neural networks in the condition monitoring of ground anchorages
The GRANIT system is a nondestructive integrity testing method for ground anchorages. It has won two major UK Awards-the Design Council Millennium Product Status in 1999 and the John Logic Baird Award in 1997. It makes use of novel artificial intelligence techniques in order to learn the complicated relationship that exists between an anchorage and its frequency response to an impulse. The GRANIT system has a worldwide patent and is currently licensed to AMEC plc. It is widely recognised that nondestructive testing methods for ground anchorages need to be developed as a high priority (A National Agenda for Long-term and Fundamental Research for Civil Engineering in the United Kingdom (1992)), with only between 1 and 5% of anchorages currently being monitored in service (British Standard Code of Practice for Ground Anchorages (8081) (1989)) using currently available techniques. The GRANIT system is a solution for this requirement, and we describe how the use of artificial intelligence techniques enabled, for the first time, the cross-anchorage diagnosis of ground anchorages, where data taken from one anchorage was used to train a neural network, which was then used to diagnose the condition of an adjacent anchorage. The results presented describe the training of a neural network on data taken from a bolt anchorage, and the diagnosis, using this neural network, of further test data taken from the same anchorage. Data taken from an adjacent anchorage of similar construction is also presented to the neural network, and the cross-anchorage diagnosis of the load level of the second anchorage is achieved.
Use of neural networks in the condition monitoring of ground anchorages
The GRANIT system is a nondestructive integrity testing method for ground anchorages. It has won two major UK Awards-the Design Council Millennium Product Status in 1999 and the John Logic Baird Award in 1997. It makes use of novel artificial intelligence techniques in order to learn the complicated relationship that exists between an anchorage and its frequency response to an impulse. The GRANIT system has a worldwide patent and is currently licensed to AMEC plc. It is widely recognised that nondestructive testing methods for ground anchorages need to be developed as a high priority (A National Agenda for Long-term and Fundamental Research for Civil Engineering in the United Kingdom (1992)), with only between 1 and 5% of anchorages currently being monitored in service (British Standard Code of Practice for Ground Anchorages (8081) (1989)) using currently available techniques. The GRANIT system is a solution for this requirement, and we describe how the use of artificial intelligence techniques enabled, for the first time, the cross-anchorage diagnosis of ground anchorages, where data taken from one anchorage was used to train a neural network, which was then used to diagnose the condition of an adjacent anchorage. The results presented describe the training of a neural network on data taken from a bolt anchorage, and the diagnosis, using this neural network, of further test data taken from the same anchorage. Data taken from an adjacent anchorage of similar construction is also presented to the neural network, and the cross-anchorage diagnosis of the load level of the second anchorage is achieved.
Use of neural networks in the condition monitoring of ground anchorages
Starkey, A. (Autor:in) / Ivanovic, A. (Autor:in) / Neilson, R.D. (Autor:in) / Rodger, A. (Autor:in)
Advances in Engineering Software ; 34 ; 753-761
2003
9 Seiten, 10 Quellen
Aufsatz (Zeitschrift)
Englisch
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