Machine Learning for Predictive Management: Short and Long term Prediction of Phytoplankton Biomass using Genetic Algorithm Based Recurrent Neural Networks
暂无分享,去创建一个
Robert I. McKay | Gea-Jae Joo | K. Jeong | G. Joo | R. McKay | T. Chon | D. K. Kim | K. S. Jeong | T. S. Chon | Keon-Young Jeong | Dokyoon Kim
[1] William Remus,et al. Time series forecasting using neural networks: should the data be deseasonalized first? , 1999 .
[2] Friedrich Recknagel,et al. Predicting eutrophication effects in the Burrinjuck Reservoir (Australia) by means of the deterministic model SALMO and the recurrent neural network model ANNA , 2001 .
[3] N. N. Smirnov,et al. A revision of the Australian Cladocera (Crustacea) , 1983 .
[4] Friedrich Recknagel,et al. Unravelling and forecasting algal population dynamics in two lakes different in morphometry and eutrophication by neural and evolutionary computation , 2006, Ecol. Informatics.
[5] Juan Carlos Gutiérrez-Estrada,et al. Artificial neural network approaches to one-step weekly prediction of Dinophysis acuminata blooms in Huelva (Western Andalucía, Spain) , 2007 .
[6] Guoqiang Peter Zhang,et al. Quarterly Time-Series Forecasting With Neural Networks , 2007, IEEE Transactions on Neural Networks.
[7] V. Kvasnicka,et al. Neural and Adaptive Systems: Fundamentals Through Simulations , 2001, IEEE Trans. Neural Networks.
[8] G. Joo,et al. Vertical distribution of Microcystis population in the regulated Nakdong River, Korea , 2000, Limnology.
[9] Alan H. Fielding,et al. An introduction to machine learning methods , 1999 .
[10] Friedrich Recknagel,et al. Prediction and Elucidation of Population Dynamics of the Blue-green Algae Microcystis aeruginosa and the Diatom Stephanodiscus hantzschii in the Nakdong River-Reservoir System (South Korea) by a Recurrent Artificial Neural Network , 2006 .
[11] Ulrich Einsle. Calanoida und Cyclopoida , 1993 .
[12] G. Joo,et al. Role of Silica in Phytoplankton Succession : An Enclosure Experiment in the Downstream Nakdong River (Mulgum) , 2000 .
[13] Friedrich Recknagel,et al. Ecological Informatics: Scope, Techniques and Applications , 2006 .
[14] Henry C. Co,et al. Forecasting Thailand's rice export: Statistical techniques vs. artificial neural networks , 2007, Comput. Ind. Eng..
[15] G. Joo,et al. The phytoplankton succession in the lower part of hypertrophic Nakdong River (Mulgum), South Korea , 1998, Hydrobiologia.
[16] Peter A. Whigham,et al. Winter diatom blooms in a regulated river in South Korea: explanations based on evolutionary computation , 2007 .
[17] Peter A. Whigham,et al. Modelling Microcystis aeruginosa bloom dynamics in the Nakdong River by means of evolutionary computation and statistical approach , 2003 .
[18] Holger R. Maier,et al. Neural networks for the prediction and forecasting of water resource variables: a review of modelling issues and applications , 2000, Environ. Model. Softw..
[19] B. Moss,et al. Ecology of fresh waters : man and medium, past to future , 1998 .
[20] T. Evgeniou,et al. To combine or not to combine: selecting among forecasts and their combinations , 2005 .
[21] Xin Yao,et al. Evolving neural networks for chlorophyll-a prediction , 2001, Proceedings Fourth International Conference on Computational Intelligence and Multimedia Applications. ICCIMA 2001.
[22] K. Jeong,et al. Non-linear autoregressive modelling by Temporal Recurrent Neural Networks for the prediction of freshwater phytoplankton dynamics , 2008 .
[23] Gary R. Weckman,et al. Neural net modeling of estuarine indicators: Hindcasting phytoplankton biomass and net ecosystem production in the Neuse (North Carolina) and Trout (Florida) Rivers, USA , 2006 .
[24] K. Jeong,et al. Machine Learning Application to the Korean Freshwater Ecosystems , 2005 .
[25] Philip Hans Franses,et al. Recognizing changing seasonal patterns using artificial neural networks , 1997 .
[26] R. Death,et al. Predictive modelling and spatial mapping of freshwater fish and decapod assemblages using GIS and neural networks , 2004 .
[27] Young-Seuk Park,et al. Patternizing communities by using an artificial neural network , 1996 .
[28] Sovan Lek,et al. Artificial Neuronal Networks: Application To Ecology And Evolution , 2012 .
[29] Application of a degree-day snow depth model to a Swiss glacierised catchment to improve neural network discharge forecasts. , 2005 .
[30] Sovan Lek,et al. Applications of artificial neural networks predicting macroinvertebrates in freshwaters , 2007, Aquatic Ecology.
[31] Friedrich Recknagel,et al. Prediction and elucidation of phytoplankton dynamics in the Nakdong River (Korea) by means of a recurrent artificial neural network , 2001 .
[32] I. Dimopoulos,et al. Application of neural networks to modelling nonlinear relationships in ecology , 1996 .
[33] E. Cha,et al. Patterning of Community Changes in Benthic Macroinvertebrates Collected from Urbanized Streams for the Short Time Prediction by Temporal Artificial Neuronal Networks , 2000 .
[34] Bruce Curry,et al. Neural networks and seasonality: Some technical considerations , 2007, Eur. J. Oper. Res..
[35] B. Yegnanarayana,et al. Artificial Neural Networks , 2004 .
[36] Lawrence W. Harding,et al. Long-term increase of phytoplankton biomass in Chesapeake Bay, 1950-1994* , 1997 .
[37] Holger R. Maier,et al. Forecasting cyanobacterium Anabaena spp. in the River Murray, South Australia, using B-spline neurofuzzy models , 2001 .
[38] Alan H. Fielding,et al. Machine Learning Methods for Ecological Applications , 2012, Springer US.
[39] Thong Ngee Goh,et al. A comparative study of neural network and Box-Jenkins ARIMA modeling in time series prediction , 2002 .
[40] Ho-Sik Yoo. Statistical Analysis of Factors Affecting the Han River Water Quality , 2002 .
[41] G. Joo,et al. Zooplankton grazing on bacteria and phytoplankton in a regulated large river (Nakdong River, Korea) , 2000 .
[42] Friedrich Recknagel,et al. Phytoplankton community dynamics of two adjacent Dutch lakes in response to seasons and eutrophication control unravelled by non-supervised artificial neural networks , 2006, Ecol. Informatics.
[43] Sven Erik Jørgensen,et al. Integration of Ecosystem Theories: A Pattern , 1992, Ecology & Environment.
[44] Wenrui Huang,et al. Neural network modeling of salinity variation in Apalachicola River. , 2002, Water research.
[45] C. L. Wu,et al. Methods to improve neural network performance in daily flows prediction , 2009 .
[46] Armando Blanco,et al. A genetic algorithm to obtain the optimal recurrent neural network , 2000, Int. J. Approx. Reason..
[47] Guoqiang Peter Zhang,et al. Neural network forecasting for seasonal and trend time series , 2005, Eur. J. Oper. Res..
[48] Simon M. Mitrovic,et al. Modelling suppression of cyanobacterial blooms by flow management in a lowland river , 2006 .
[49] Dong-Kyun Kim,et al. River phytoplankton prediction model by Artificial Neural Network: Model performance and selection of input variables to predict time-series phytoplankton proliferations in a regulated river system , 2006, Ecological Informatics.
[50] Young-Seuk Park,et al. Community patterning and identification of predominant factors in algal bloom in Daechung Reservoir (Korea) using artificial neural networks , 2007 .
[51] Andrew R.G. Large,et al. Rehabilitation of River Margins , 1994 .
[52] Peter A. Whigham,et al. Predicting chlorophyll-a in freshwater lakes by hybridising process-based models and genetic algorithms , 2001 .
[53] Kwang-Seuk Jeong,et al. Delayed influence of dam storage and discharge on the determination of seasonal proliferations of Microcystis aeruginosa and Stephanodiscus hantzschii in a regulated river system of the lower Nakdong River (South Korea). , 2007, Water research.
[54] Gea-Jae Joo,et al. Articles : Long - Term Trend of the Eutrophication of the Lower Nakdong River , 1997 .
[55] Kazuo Asakawa,et al. Stock market prediction system with modular neural networks , 1990, 1990 IJCNN International Joint Conference on Neural Networks.
[57] Haiyan Song,et al. Tourism demand modelling and forecasting—A review of recent research , 2008 .
[58] Young-Seuk Park,et al. Modelling Community Structure in Freshwater Ecosystems , 2014 .
[59] R. Valentini,et al. A new assessment of European forests carbon exchanges by eddy fluxes and artificial neural network spatialization , 2003 .
[60] G J Joo,et al. Modelling community changes of cyanobacteria in a flow regulated river (the lower Nakdong River, S. Korea) by means of a Self-Organizing Map (SOM) , 2005 .
[61] Geoffrey E. Hinton,et al. Learning representations by back-propagating errors , 1986, Nature.
[62] J. Descy,et al. Grazing by large river zooplankton: a key to summer potamoplankton decline? The case of the Meuse and Moselle rivers in 1994 and 1995 , 1998, Hydrobiologia.
[63] Weifeng Tian,et al. A seasonal GRBF network for nonstationary time series prediction , 2006 .
[64] R. Gencay. Non-linear prediction of security returns with moving average rules , 1996 .
[65] Gea-Jae Joo,et al. Microcystis bloom formation in the lower Nakdong River, South Korea: importance of hydrodynamics and nutrient loading , 1999 .
[66] Yi-Hui Liang,et al. Combining seasonal time series ARIMA method and neural networks with genetic algorithms for predicting the production value of the mechanical industry in Taiwan , 2009, Neural Computing and Applications.
[67] Peter Calow,et al. The River's handbook: hydrological and ecological principles. Vol. 1 , 1993 .
[68] Xin Yao,et al. Evolving artificial neural networks , 1999, Proc. IEEE.
[69] Min-Ho Jang,et al. Winter Stephanodiscus bloom development in the Nakdong River regulated by an estuary dam and tributaries , 2003, Hydrobiologia.