暂无分享,去创建一个
Muhammed Sit | Bekir Z. Demiray | Zhongrun Xiang | Gregory J. Ewing | Yusuf Sermet | Ibrahim Demir | I. Demir | Y. Sermet | Z. Xiang | M. Sit | B. Demiray | Gregory Ewing
[1] Berkman Sahiner,et al. Deep learning in medical imaging and radiation therapy. , 2018, Medical physics.
[2] ChangKyoo Yoo,et al. An autonomous operational trajectory searching system for an economic and environmental membrane bioreactor plant using deep reinforcement learning. , 2020, Water science and technology : a journal of the International Association on Water Pollution Research.
[3] Anuj Karpatne,et al. Process‐Guided Deep Learning Predictions of Lake Water Temperature , 2019, Water Resources Research.
[4] Sa-Kwang Song,et al. Computer Vision in Precipitation Nowcasting: Applying Image Quality Assessment Metrics for Training Deep Neural Networks , 2019, Atmosphere.
[5] George Cybenko,et al. Approximation by superpositions of a sigmoidal function , 1989, Math. Control. Signals Syst..
[6] Thilo Hagendorff,et al. The Ethics of AI Ethics: An Evaluation of Guidelines , 2019, Minds and Machines.
[7] Thomas Brox,et al. U-Net: Convolutional Networks for Biomedical Image Segmentation , 2015, MICCAI.
[8] D. S. Reddy,et al. Prediction of vegetation dynamics using NDVI time series data and LSTM , 2018, Modeling Earth Systems and Environment.
[9] Allan Pinkus,et al. Multilayer Feedforward Networks with a Non-Polynomial Activation Function Can Approximate Any Function , 1991, Neural Networks.
[10] Jin Zhang,et al. Short-Term Streamflow Forecasting Using the Feature-Enhanced Regression Model , 2019, Water Resources Management.
[11] Jia Guo,et al. Construction of a drought monitoring model using deep learning based on multi-source remote sensing data , 2019, Int. J. Appl. Earth Obs. Geoinformation.
[12] Yuan Cao,et al. A Deep Learning‐Based Methodology for Precipitation Nowcasting With Radar , 2020, Earth and Space Science.
[13] Antti Mäkelä,et al. Evaluation of Machine Learning Classifiers for Predicting Deep Convection , 2019, Journal of Advances in Modeling Earth Systems.
[14] Keunyong Kim,et al. Early Prediction of Margalefidinium polykrikoides Bloom Using a LSTM Neural Network Model in the South Sea of Korea , 2019, Journal of Coastal Research.
[15] R. Mantilla,et al. Data-driven stochastic model for basin and sub-grid variability of SMAP satellite soil moisture , 2019, Journal of Hydrology.
[16] Li-Chiu Chang,et al. Exploring a Long Short-Term Memory based Encoder-Decoder framework for multi-step-ahead flood forecasting , 2020 .
[17] Rune Hylsberg Jacobsen,et al. A cloud detection algorithm for satellite imagery based on deep learning , 2019, Remote Sensing of Environment.
[18] Lei Xiaohui,et al. Simulating and Predicting of Hydrological Time Series Based on TensorFlow Deep Learning , 2018, Polish Journal of Environmental Studies.
[19] Weiwei Jiang. Object-based deep convolutional autoencoders for high-resolution remote sensing image classification , 2018 .
[20] Farhad Samadzadegan,et al. Deep learning decision fusion for the classification of urban remote sensing data , 2018 .
[21] Peng Jiang,et al. Water quality prediction based on recurrent neural network and improved evidence theory: a case study of Qiantang River, China , 2019, Environmental Science and Pollution Research.
[22] Geoffrey E. Hinton. Training Products of Experts by Minimizing Contrastive Divergence , 2002, Neural Computation.
[23] Erlend Skullestad Holland,et al. Hydraulic modeling and deep learning based flow forecasting for optimizing inter catchment wastewater transfer , 2017, Journal of Hydrology.
[24] Ibrahim Demir,et al. Serious gaming for participatory planning of multi-hazard mitigation , 2018, International Journal of River Basin Management.
[25] Yi Luo,et al. Spatial-temporal process simulation and prediction of chlorophyll-a concentration in Dianchi Lake based on wavelet analysis and long-short term memory network , 2020 .
[26] Yu Li,et al. Multi-sensor cloud and cloud shadow segmentation with a convolutional neural network , 2019, Remote Sensing of Environment.
[27] Hermann Ney,et al. LSTM Neural Networks for Language Modeling , 2012, INTERSPEECH.
[28] Shuai Hu,et al. Use of the C-Band Microwave Link to Distinguish between Rainy and Dry Periods , 2019, Advances in Meteorology.
[29] Hossein Arefi,et al. Convolutional neural network architecture for digital surface model estimation from single remote sensing image , 2019, Journal of Applied Remote Sensing.
[30] John W. Labadie,et al. Deep learning for compute-efficient modeling of BMP impacts on stream- aquifer exchange and water law compliance in an irrigated river basin , 2019, Environ. Model. Softw..
[31] Ivan Bartoli,et al. Semisupervised classification of hurricane damage from postevent aerial imagery using deep learning , 2018, Journal of Applied Remote Sensing.
[32] Peter Tiño,et al. Learning long-term dependencies in NARX recurrent neural networks , 1996, IEEE Trans. Neural Networks.
[33] Kuolin Hsu,et al. Improving Precipitation Estimation Using Convolutional Neural Network , 2019, Water Resources Research.
[34] Sildomar T. Monteiro,et al. Semantic segmentation of multisensor remote sensing imagery with deep ConvNets and higher-order conditional random fields , 2019, Journal of Applied Remote Sensing.
[35] Gregory J. Ewing,et al. An Ethical Decision-Making Framework with Serious Gaming: Smart Water Case Study on Flooding , 2020 .
[36] Geoffrey E. Hinton,et al. ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.
[37] Akira Iwasaki,et al. Cloud detection on small satellites based on lightweight U-net and image compression , 2019, Journal of Applied Remote Sensing.
[38] Zhongchang Sun,et al. Extracting Urban Impervious Surface from WorldView-2 and Airborne LiDAR Data Using 3D Convolutional Neural Networks , 2018, Journal of the Indian Society of Remote Sensing.
[39] Ibrahim Demir,et al. FLOODSS: Iowa flood information system as a generalized flood cyberinfrastructure , 2018 .
[40] Witold F. Krajewski,et al. Bridge-Mounted River Stage Sensors (BMRSS) , 2016, IEEE Access.
[41] Chuli Hu,et al. A spatiotemporal deep learning model for sea surface temperature field prediction using time-series satellite data , 2019, Environ. Model. Softw..
[42] Jiancang Xie,et al. Daily Runoff Forecasting Using a Hybrid Model Based on Variational Mode Decomposition and Deep Neural Networks , 2019, Water Resources Management.
[43] Bong-Chul Seo,et al. Real-Time Flood Forecasting and Information System for the State of Iowa , 2017 .
[44] J. Adamowski,et al. Short-term water quality variable prediction using a hybrid CNN–LSTM deep learning model , 2020, Stochastic Environmental Research and Risk Assessment.
[45] Mehmet Haklidir,et al. Prediction of Reservoir Temperatures Using Hydrogeochemical Data, Western Anatolia Geothermal Systems (Turkey): A Machine Learning Approach , 2019, Natural Resources Research.
[46] Scott Steinschneider,et al. Prediction and Inference of Flow Duration Curves Using Multioutput Neural Networks , 2019, Water Resources Research.
[47] Yeon-Joong Kim,et al. Development of Disaster Prevention System Based on Deep Neural Network using Deep Learning with Dropout , 2019, Journal of Coastal Research.
[48] Iyad Rahwan,et al. Society-in-the-loop: programming the algorithmic social contract , 2017, Ethics and Information Technology.
[49] Markus Disse,et al. Fully automated snow depth measurements from time-lapse images applying a convolutional neural network. , 2019, The Science of the total environment.
[50] Sangmok Lee,et al. Improved Prediction of Harmful Algal Blooms in Four Major South Korea’s Rivers Using Deep Learning Models , 2018, International journal of environmental research and public health.
[51] Jianfeng Wu,et al. Streamflow and rainfall forecasting by two long short-term memory-based models , 2020 .
[52] Shihua Li,et al. Object-Oriented Method Combined with Deep Convolutional Neural Networks for Land-Use-Type Classification of Remote Sensing Images , 2019, Journal of the Indian Society of Remote Sensing.
[53] Han Li,et al. A Convection Nowcasting Method Based on Machine Learning , 2020, Advances in Meteorology.
[54] Balasubramaniam Natarajan,et al. Comparison of learning-based wastewater flow prediction methodologies for smart sewer management , 2019, Journal of Hydrology.
[55] Zhenheng Tang,et al. Deep learning identifies accurate burst locations in water distribution networks. , 2019, Water research.
[56] Ibrahim Demir,et al. Optimized watershed delineation library for server-side and client-side web applications , 2019, Open Geospatial Data, Software and Standards.
[57] Yusuf Sermet,et al. A serious gaming framework for decision support on hydrological hazards. , 2020, The Science of the total environment.
[58] Yuanyuan Zha,et al. Seeing macro-dispersivity from hydraulic conductivity field with convolutional neural network , 2020, Advances in Water Resources.
[59] Mariusz Ptak,et al. Forecasting of water level in multiple temperate lakes using machine learning models , 2020 .
[60] Eleni Kroupi,et al. Deep convolutional neural networks for land-cover classification with Sentinel-2 images , 2019 .
[61] J. Sabo,et al. Accurate Prediction of Streamflow Using Long Short-Term Memory Network: A Case Study in the Brazos River Basin in Texas , 2019, International Journal of Environmental Science and Development.
[62] Amiya Ranjan Bhowmick,et al. Environmental factors as indicators of dissolved oxygen concentration and zooplankton abundance: Deep learning versus traditional regression approach , 2019, Ecological Indicators.
[63] Dengfeng Chai,et al. Cloud and cloud shadow detection in Landsat imagery based on deep convolutional neural networks , 2019, Remote Sensing of Environment.
[64] D. Long,et al. Reconstruction of GRACE Data on Changes in Total Water Storage Over the Global Land Surface and 60 Basins , 2020, Water Resources Research.
[65] Arun Kumar Sangaiah,et al. Analysis and Prediction of Water Quality Using LSTM Deep Neural Networks in IoT Environment , 2019, Sustainability.
[66] Kounghoon Nam,et al. An extreme rainfall-induced landslide susceptibility assessment using autoencoder combined with random forest in Shimane Prefecture, Japan , 2020 .
[67] G. Foody,et al. Measuring River Wetted Width From Remotely Sensed Imagery at the Subpixel Scale With a Deep Convolutional Neural Network , 2019, Water Resources Research.
[68] Jonathan A. Weyn,et al. Can Machines Learn to Predict Weather? Using Deep Learning to Predict Gridded 500‐hPa Geopotential Height From Historical Weather Data , 2019, Journal of Advances in Modeling Earth Systems.
[69] Roberto Cipolla,et al. SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation , 2015, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[70] Shuying Zang,et al. Lake Wetland Classification Based on an SVM-CNN Composite Classifier and High-resolution Images Using Wudalianchi as an Example , 2019, Journal of Coastal Research.
[71] Linda Daniela. New Perspectives on Virtual and Augmented Reality - Finding New Ways to Teach in a Transformed Learning Environment , 2020, New Perspectives on Virtual and Augmented Reality.
[72] Tae-Kyung Kim,et al. Wave-Tracking in the Surf Zone Using Coastal Video Imagery with Deep Neural Networks , 2020, Atmosphere.
[73] Hanumant Singh,et al. Estimating early-winter Antarctic sea ice thickness from deformed ice morphology , 2019, The Cryosphere.
[74] Yoshua Bengio,et al. On the Properties of Neural Machine Translation: Encoder–Decoder Approaches , 2014, SSST@EMNLP.
[75] Paulin Coulibaly,et al. Recent advances in data-driven modeling of remote sensing applications in hydrology , 2009 .
[76] Xiaohui Yuan,et al. An improved long short-term memory network for streamflow forecasting in the upper Yangtze River , 2020, Stochastic Environmental Research and Risk Assessment.
[77] Guigang Zhang,et al. Deep Learning , 2016, Int. J. Semantic Comput..
[78] Guoren Xu,et al. Novel performance prediction model of a biofilm system treating domestic wastewater based on stacked denoising auto-encoders deep learning network , 2018, Chemical Engineering Journal.
[79] P. Gentine,et al. Evaluation and machine learning improvement of global hydrological model-based flood simulations , 2019, Environmental Research Letters.
[80] Tony Doyle,et al. Weapons of Math Destruction: How Big Data Increases Inequality and Threatens Democracy , 2017, Inf. Soc..
[81] Chee Kheong Siew,et al. Extreme learning machine: Theory and applications , 2006, Neurocomputing.
[82] Dawen Yang,et al. Real-time reservoir operation using recurrent neural networks and inflow forecast from a distributed hydrological model , 2019 .
[83] Kurt Hornik,et al. Multilayer feedforward networks are universal approximators , 1989, Neural Networks.
[84] Qiuwen Zhang,et al. A Novel Hybrid Data-Driven Model for Daily Land Surface Temperature Forecasting Using Long Short-Term Memory Neural Network Based on Ensemble Empirical Mode Decomposition , 2018, International journal of environmental research and public health.
[85] Jean-Raynald de Dreuzy,et al. Prospective Interest of Deep Learning for Hydrological Inference , 2017, Ground water.
[86] Vangelis Karkaletsis,et al. Autoencoder-Driven Weather Clustering for Source Estimation during Nuclear Events , 2017, Environ. Model. Softw..
[87] Jian Sun,et al. Deep Residual Learning for Image Recognition , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[88] Muhammed Sit,et al. Hydrology@Home: a distributed volunteer computing framework for hydrological research and applications , 2019, Journal of Hydroinformatics.
[89] C. C. Pain,et al. Rapid spatio-temporal flood prediction and uncertainty quantification using a deep learning method , 2019, Journal of Hydrology.
[90] Geoffrey E. Hinton,et al. Learning internal representations by error propagation , 1986 .
[91] Hai Chu,et al. Correction model for rainfall forecasts using the LSTM with multiple meteorological factors , 2019, Meteorological Applications.
[92] Yoshua Bengio,et al. The problem of learning long-term dependencies in recurrent networks , 1993, IEEE International Conference on Neural Networks.
[93] Yoshua Bengio,et al. Generative Adversarial Nets , 2014, NIPS.
[94] Venet Osmani,et al. Monitoring and detecting faults in wastewater treatment plants using deep learning , 2020, Environmental Monitoring and Assessment.
[95] Chih-Chiang Wei,et al. Nearshore two-step typhoon wind-wave prediction using deep recurrent neural networks , 2020, Journal of Hydroinformatics.
[96] Peng Jiang,et al. A Hybrid Model for Real-Time Probabilistic Flood Forecasting Using Elman Neural Network with Heterogeneity of Error Distributions , 2019, Water Resources Management.
[97] Duo Zhang,et al. Manage Sewer In-Line Storage Control Using Hydraulic Model and Recurrent Neural Network , 2018, Water Resources Management.
[98] Jasjit S. Suri,et al. The present and future of deep learning in radiology. , 2019, European journal of radiology.
[99] Xueliang Zhang,et al. Deep learning in remote sensing applications: A meta-analysis and review , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.
[100] Ibrahim Demir,et al. Flood action VR: a virtual reality framework for disaster awareness and emergency response training , 2019, SIGGRAPH Posters.
[101] Sandhya Patidar,et al. Investigating capabilities of machine learning techniques in forecasting stream flow , 2020 .
[102] Alex Graves,et al. Playing Atari with Deep Reinforcement Learning , 2013, ArXiv.
[103] Ibrahim Demir,et al. Decentralized Flood Forecasting Using Deep Neural Networks , 2019, ArXiv.
[104] Chao Wu,et al. A water quality prediction method based on the multi-time scale bidirectional long short-term memory network , 2020, Environmental Science and Pollution Research.
[105] Yann LeCun,et al. Generalization and network design strategies , 1989 .
[106] Yintian Liu,et al. Generative Adversarial Networks Capabilities for Super-Resolution Reconstruction of Weather Radar Echo Images , 2019, Atmosphere.
[107] Sebastian Scher,et al. Predicting weather forecast uncertainty with machine learning , 2018, Quarterly Journal of the Royal Meteorological Society.
[108] Fei Gao,et al. Three-dimensional densely connected convolutional network for hyperspectral remote sensing image classification , 2019, Journal of Applied Remote Sensing.
[109] Ibrahim Demir,et al. An intelligent system on knowledge generation and communication about flooding , 2018, Environ. Model. Softw..
[110] S. Hochreiter,et al. Toward Improved Predictions in Ungauged Basins: Exploiting the Power of Machine Learning , 2019, Water Resources Research.
[111] Zhongrun Xiang,et al. Distributed long-term hourly streamflow predictions using deep learning - A case study for State of Iowa , 2020, Environ. Model. Softw..
[112] Manchun Li,et al. Using convolutional neural network to identify irregular segmentation objects from very high-resolution remote sensing imagery , 2018 .
[113] Christopher K. Wikle,et al. Modeling Hydrologic Change: Statistical Methods , 2003, Technometrics.
[114] Fouzi Harrou,et al. Statistical monitoring of a wastewater treatment plant: A case study. , 2018, Journal of environmental management.
[115] Laisong Kang,et al. Wave Monitoring Based on Improved Convolution Neural Network , 2019, Journal of Coastal Research.
[116] Inhyeok Yim,et al. Deep learning-based retrieval of cyanobacteria pigment in inland water for in-situ and airborne hyperspectral data , 2020 .
[117] Jichun Wu,et al. Deep Autoregressive Neural Networks for High‐Dimensional Inverse Problems in Groundwater Contaminant Source Identification , 2018, Water Resources Research.
[118] M. Watkins,et al. The gravity recovery and climate experiment: Mission overview and early results , 2004 .
[119] Jan Hendrik Witte,et al. Deep Learning for Finance: Deep Portfolios , 2016 .
[120] Jungang Luo,et al. Decomposition ensemble model based on variational mode decomposition and long short-term memory for streamflow forecasting , 2020 .
[121] Kavita Bhosle,et al. Evaluation of Deep Learning CNN Model for Land Use Land Cover Classification and Crop Identification Using Hyperspectral Remote Sensing Images , 2019, Journal of the Indian Society of Remote Sensing.
[122] Meral Yurtsever,et al. Use of a convolutional neural network for the classification of microbeads in urban wastewater. , 2019, Chemosphere.
[123] Ibrahim Demir,et al. Optimization of river network representation data models for web‐based systems , 2017 .
[124] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[125] Heng Li,et al. Deep Learning of Subsurface Flow via Theory-guided Neural Network , 2019, ArXiv.
[126] Weon Shik Han,et al. Estimation of groundwater level based on the robust training of recurrent neural networks using corrupted data , 2020 .
[127] Yang Hong,et al. Exploring Deep Neural Networks to Retrieve Rain and Snow in High Latitudes Using Multisensor and Reanalysis Data , 2018, Water Resources Research.
[128] Bahrudin Hrnjica,et al. Lake Level Prediction using Feed Forward and Recurrent Neural Networks , 2019, Water Resources Management.
[129] Xuan Linh Nguyen,et al. Verification of novel integrations of swarm intelligence algorithms into deep learning neural network for flood susceptibility mapping , 2020, Journal of Hydrology.
[130] J. D. Wegner,et al. Scalable Flood Level Trend Monitoring with Surveillance Cameras using a Deep Convolutional Neural Network , 2019 .
[131] Christian Ledig,et al. Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[132] Pijush Samui,et al. Forecasting monthly precipitation using sequential modelling , 2019, Hydrological Sciences Journal.
[133] R. Jaiswal,et al. Comparative evaluation of conceptual and physical rainfall–runoff models , 2020, Applied Water Science.
[134] Yi Wang,et al. Flood susceptibility mapping using convolutional neural network frameworks , 2020 .
[135] Xin Pan,et al. An object-based convolutional neural network (OCNN) for urban land use classification , 2018, Remote Sensing of Environment.
[136] Yanbin Yuan,et al. Monthly runoff forecasting based on LSTM–ALO model , 2018, Stochastic Environmental Research and Risk Assessment.
[137] Glenn Shafer,et al. A Mathematical Theory of Evidence , 2020, A Mathematical Theory of Evidence.
[138] Jina Jeong,et al. Comparative applications of data-driven models representing water table fluctuations , 2018, Journal of Hydrology.
[139] Pijush Samui,et al. A novel deep learning neural network approach for predicting flash flood susceptibility: A case study at a high frequency tropical storm area. , 2019, The Science of the total environment.
[140] Andre Esteva,et al. A guide to deep learning in healthcare , 2019, Nature Medicine.
[141] Fanghua Hao,et al. Exploring the application of artificial intelligence technology for identification of water pollution characteristics and tracing the source of water quality pollutants. , 2019, The Science of the total environment.
[142] Karsten Schulz,et al. Rainfall–runoff modelling using Long Short-Term Memory (LSTM) networks , 2018, Hydrology and Earth System Sciences.
[143] Qianshan He,et al. Classification of Ice Crystal Habits Observed From Airborne Cloud Particle Imager by Deep Transfer Learning , 2019, Earth and Space Science.
[144] 이상헌,et al. Deep Belief Networks , 2010, Encyclopedia of Machine Learning.
[145] Yutao Qi,et al. A Decomposition-Ensemble Learning Model Based on LSTM Neural Network for Daily Reservoir Inflow Forecasting , 2019, Water Resources Management.
[146] Yusuf Sermet,et al. Virtual and augmented reality applications for environmental science education and training , 2020, New Perspectives on Virtual and Augmented Reality.
[147] Annamária R. Várkonyi-Kóczy,et al. Deep Learning and Machine Learning in Hydrological Processes Climate Change and Earth Systems a Systematic Review , 2019 .
[148] Markus Disse,et al. Flood inundation forecasts using validation data generated with the assistance of computer vision , 2018, Journal of Hydroinformatics.
[149] Liang-pei Zhang,et al. Estimating snow depth by combining satellite data and ground-based observations over Alaska: A deep learning approach , 2020, Journal of Hydrology.
[150] Dumitru Erhan,et al. Going deeper with convolutions , 2014, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[151] Xu Zhe,et al. Pressure prediction and abnormal working conditions detection of water supply network based on LSTM , 2020 .
[152] Jie Li,et al. Deriving reservoir operation rule based on Bayesian deep learning method considering multiple uncertainties , 2019 .
[153] Ibrahim Demir,et al. Identifying disaster-related tweets and their semantic, spatial and temporal context using deep learning, natural language processing and spatial analysis: a case study of Hurricane Irma , 2019, Int. J. Digit. Earth.
[154] QianSheng Fang,et al. Detection of multiple leakage points in water distribution networks based on convolutional neural networks , 2019 .
[155] Jonathan L. Goodall,et al. Deep learning Using Physically-Informed Input Data for Wetland Identification , 2020, Environ. Model. Softw..
[156] J. Niu,et al. Real-time water level prediction of cascaded channels based on multilayer perception and recurrent neural network , 2020, Journal of Hydrology.
[157] Jürgen Schmidhuber,et al. Long Short-Term Memory , 1997, Neural Computation.
[158] Muhammed Sit,et al. Realistic River Image Synthesis Using Deep Generative Adversarial Networks , 2020, Frontiers in Water.
[159] Pingkun Yan,et al. Deep learning in medical image registration: a survey , 2020, Machine Vision and Applications.
[160] M. Ye,et al. Developing a Long Short-Term Memory (LSTM) based model for predicting water table depth in agricultural areas , 2018, Journal of Hydrology.
[161] Andrew Zisserman,et al. Very Deep Convolutional Networks for Large-Scale Image Recognition , 2014, ICLR.
[162] W. Krajewski,et al. The Iowa Watersheds Project: Iowa's prototype for engaging communities and professionals in watershed hazard mitigation , 2018 .
[163] Richard Alan Peters,et al. A Review of Deep Learning with Special Emphasis on Architectures, Applications and Recent Trends , 2019, Knowl. Based Syst..
[164] Y. T. Zhou,et al. Computation of optical flow using a neural network , 1988, IEEE 1988 International Conference on Neural Networks.
[165] L. P. Wang,et al. Comments on "The Extreme Learning Machine" , 2008, IEEE Trans. Neural Networks.
[166] John Ray Bergado,et al. Delineation of agricultural fields in smallholder farms from satellite images using fully convolutional networks and combinatorial grouping , 2019, Remote sensing of environment.
[167] Jingwei Wu,et al. Comparison of partial least square regression, support vector machine, and deep-learning techniques for estimating soil salinity from hyperspectral data , 2018 .
[168] Ruimin Liu,et al. Sequence-based statistical downscaling and its application to hydrologic simulations based on machine learning and big data , 2020 .
[169] Duo Xu,et al. PoreFlow-Net: A 3D convolutional neural network to predict fluid flow through porous media , 2020, Advances in Water Resources.
[170] Jeffrey L. Elman,et al. Finding Structure in Time , 1990, Cogn. Sci..
[171] Alessandro Artusi,et al. Identifying floating plastic marine debris using a deep learning approach , 2019, Environmental Science and Pollution Research.
[172] D. Bae,et al. Correcting mean areal precipitation forecasts to improve urban flooding predictions by using long short-term memory network , 2020 .
[173] Geoffrey E. Hinton,et al. Learning representations by back-propagating errors , 1986, Nature.
[174] Bertrand Chapron,et al. Classification of the global Sentinel-1 SAR vignettes for ocean surface process studies , 2019 .
[175] Massimiliano Zappa,et al. How can expert knowledge increase the realism of conceptual hydrological models? A case study based on the concept of dominant runoff process in the Swiss Pre-Alps , 2018, Hydrology and Earth System Sciences.
[176] Suresh Sankaranarayanan,et al. Flood prediction based on weather parameters using deep learning , 2019, Journal of Water and Climate Change.
[177] Zhijing Yang,et al. Convolutional neural network extreme learning machine for effective classification of hyperspectral images , 2018, Journal of Applied Remote Sensing.
[178] Yeji Kim,et al. Change Detection of Surface Water in Remote Sensing Images Based on Fully Convolutional Network , 2019 .
[179] S. Poornima,et al. Prediction of Rainfall Using Intensified LSTM Based Recurrent Neural Network with Weighted Linear Units , 2019, Atmosphere.
[180] Yi Xia,et al. Convolutional Residual-Attention: A Deep Learning Approach for Precipitation Nowcasting , 2020 .
[181] Alexei A. Efros,et al. Image-to-Image Translation with Conditional Adversarial Networks , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[182] Yusuf Sermet,et al. Crowdsourced approaches for stage measurements at ungauged locations using smartphones , 2020, Hydrological Sciences Journal.
[183] Jichun Wu,et al. Deep Convolutional Encoder‐Decoder Networks for Uncertainty Quantification of Dynamic Multiphase Flow in Heterogeneous Media , 2018, Water Resources Research.
[184] Soroosh Sorooshian,et al. Modeling and simulating of reservoir operation using the artificial neural network, support vector regression, deep learning algorithm , 2018, Journal of Hydrology.
[185] Ying Chen,et al. Applied method for water-body segmentation based on mask R-CNN , 2020 .
[186] Wenpeng Yin,et al. Comparative Study of CNN and RNN for Natural Language Processing , 2017, ArXiv.
[187] Scott D. Hamshaw,et al. A New Machine‐Learning Approach for Classifying Hysteresis in Suspended‐Sediment Discharge Relationships Using High‐Frequency Monitoring Data , 2018, Water Resources Research.
[188] Marcello Ienca,et al. Artificial Intelligence: the global landscape of ethics guidelines , 2019, ArXiv.
[189] Duo Zhang,et al. Use Long Short-Term Memory to Enhance Internet of Things for Combined Sewer Overflow Monitoring , 2018 .
[190] Jun Yan,et al. A Rainfall‐Runoff Model With LSTM‐Based Sequence‐to‐Sequence Learning , 2020, Water Resources Research.
[191] G. Mariéthoz,et al. High-resolution palaeovalley classification from airborne electromagnetic imaging and deep neural network training using digital elevation model data , 2019 .
[192] Muhammed Sit,et al. D-SRGAN: DEM Super-Resolution with Generative Adversarial Networks , 2020, SN Computer Science.
[193] Jordan B. Pollack,et al. Recursive Distributed Representations , 1990, Artif. Intell..
[194] David Walling,et al. Combining Physically Based Modeling and Deep Learning for Fusing GRACE Satellite Data: Can We Learn From Mismatch? , 2019, Water Resources Research.
[195] Yong Liu,et al. Simulate the forecast capacity of a complicated water quality model using the long short-term memory approach , 2020 .
[196] Guoqing Wang,et al. A spatiotemporal deep fusion model for merging satellite and gauge precipitation in China , 2020 .
[197] K. Denman,et al. Carbon emission limits required to satisfy future representative concentration pathways of greenhouse gases , 2011 .
[198] Geoffrey E. Hinton,et al. Rectified Linear Units Improve Restricted Boltzmann Machines , 2010, ICML.