TY - GEN
T1 - Simulation of oil spill using ANN and CA models
AU - Zhang, Yihan
AU - Qiao, Jigang
AU - Wu, Bingqi
AU - Jiang, Weiqi
AU - Xu, Xiaocong
AU - Hu, Guohua
N1 - Publisher Copyright:
© 2015 IEEE.
PY - 2016/1/11
Y1 - 2016/1/11
N2 - In this paper, the artificial neural network (ANN) used to obtain transition rules in oil spill CA model. Model parameters are difficult to obtain in many traditional oil spill models, as they cannot meet the requirements of rapid response for oil spills. Therefore, a new oil spill model-ANN oil spill CA model was established in this paper. This model can simulate the change process of oil spill by setting initial image, verification image, and impact factors. Experimental results show that the simulation results have a good performance with overall accuracy of 96.6% and Kappa coefficient of 0.826. It was also found that the consistency of simulation results is proportional to the ratio of training sample. However, the higher the ratio of the training sample, the more computation is need in the ANN training. We also studied the effect of neurons number in the hidden layer. Studies show that the consistency of simulation results becomes better with the increase of neurons number in the initial stage for good fitting rate of training sample. However, the consistency of simulation results get worse for over-fitting of training sample in following stage.
AB - In this paper, the artificial neural network (ANN) used to obtain transition rules in oil spill CA model. Model parameters are difficult to obtain in many traditional oil spill models, as they cannot meet the requirements of rapid response for oil spills. Therefore, a new oil spill model-ANN oil spill CA model was established in this paper. This model can simulate the change process of oil spill by setting initial image, verification image, and impact factors. Experimental results show that the simulation results have a good performance with overall accuracy of 96.6% and Kappa coefficient of 0.826. It was also found that the consistency of simulation results is proportional to the ratio of training sample. However, the higher the ratio of the training sample, the more computation is need in the ANN training. We also studied the effect of neurons number in the hidden layer. Studies show that the consistency of simulation results becomes better with the increase of neurons number in the initial stage for good fitting rate of training sample. However, the consistency of simulation results get worse for over-fitting of training sample in following stage.
KW - DeepSpill
KW - artificial neural network (ANN)
KW - cellular automata(CA)
KW - simulation of oil spill
UR - https://www.scopus.com/pages/publications/84962408998
U2 - 10.1109/GEOINFORMATICS.2015.7378560
DO - 10.1109/GEOINFORMATICS.2015.7378560
M3 - 会议稿件
AN - SCOPUS:84962408998
T3 - International Conference on Geoinformatics
BT - Proceedings - 23rd International Conference on Geoinformatics 2015, Geoinformatics 2015
A2 - Hu, Shixiong
A2 - Ye, Xinyue
PB - IEEE Computer Society
T2 - 23rd International Conference on Geoinformatics, Geoinformatics 2015
Y2 - 19 June 2015 through 21 June 2015
ER -