Dynamic Optimization of Watering in Satsuma Mandarin using Neural Networks and Genetic Algorithms
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- Morimoto Tetsuo MORIMOTO Tetsuo
- Department of Biomechanical Systems, Faculty of Agriculture, Ehime University
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- Ouchi Yoshinori OUCHI Yoshinori
- Ehime Agricultural Experiment Station
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- Tamai Takahisa [他] TAMAI Takahisa
- Agriculture, Forestry and Fisheries Department, Ehime Prefecture
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- ISHIDA Noriyoshi
- Agriculture, Forestry and Fisheries Department, Ehime Prefecture
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Author(s)
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- Morimoto Tetsuo MORIMOTO Tetsuo
- Department of Biomechanical Systems, Faculty of Agriculture, Ehime University
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- Ouchi Yoshinori OUCHI Yoshinori
- Ehime Agricultural Experiment Station
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- Tamai Takahisa [他] TAMAI Takahisa
- Agriculture, Forestry and Fisheries Department, Ehime Prefecture
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- ISHIDA Noriyoshi
- Agriculture, Forestry and Fisheries Department, Ehime Prefecture
Journal
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- Environment control in biology
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Environment control in biology 44(2), 119-132, 2006-06-30
Japanese Society of Environment Control in Biology
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