ディープラーニングにより精度97%で気温の上下を推定する手法を開発 --疑似カラー画像による効率的な自動識別--. 京都大学プレスリリース. 2019-04-26.Climate change is undoubtedly one of the biggest problems in the 21st century. Currently, however, most research efforts on climate forecasting are based on mechanistic, bottom-up approaches such as physics-based general circulation models and earth system models. In this study, we explore the performance of a phenomenological, top-down model constructed using a neural network and big data of global mean monthly temperature. By generating graphical images using the monthly temperature data of 30 years, the neural network system successfully predicts the rise and fall of temperatures for the next 10 years. Using LeNet for the convolutional neural network, the a...
Time-series profiles derived from temperature proxies such as tree rings can provide information abo...
This study presents a new methodology for improving forecasts of current monthly, regional precipita...
Abstract We present a significantly improved data‐driven global weather forecasting framework using ...
Climate change temperature prediction plays a crucial role in effective environmental planning. This...
Global temperature variations between 1861 and 1984 are forecast usingsregularization networks, mult...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Recently, there has been growing interest in the possibility of using neural networks for both weath...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Artificial intelligence through deep neural networks is now widely used in a variety of applications...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
機械学習による世界の気候パターンの分類に成功 --30年間の気候データを画像化して深層学習で識別--. 京都大学プレスリリース. 2020-07-28.Analyzing and utilizing ...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Deep learning techniques (in particular convolutional neural networks, CNNs) have recently emerged a...
The concept of neural network models (NNM) is a statistical strategy which can be used if a superpos...
Currently, global warming is the leading source of climate pollution due to the release of CO2 and o...
Time-series profiles derived from temperature proxies such as tree rings can provide information abo...
This study presents a new methodology for improving forecasts of current monthly, regional precipita...
Abstract We present a significantly improved data‐driven global weather forecasting framework using ...
Climate change temperature prediction plays a crucial role in effective environmental planning. This...
Global temperature variations between 1861 and 1984 are forecast usingsregularization networks, mult...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Recently, there has been growing interest in the possibility of using neural networks for both weath...
Abstract Many problems in climate science require the identification of signals obscured by both the...
Artificial intelligence through deep neural networks is now widely used in a variety of applications...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
機械学習による世界の気候パターンの分類に成功 --30年間の気候データを画像化して深層学習で識別--. 京都大学プレスリリース. 2020-07-28.Analyzing and utilizing ...
Abstract It remains difficult to disentangle the relative influences of aerosols and greenhouse gase...
Deep learning techniques (in particular convolutional neural networks, CNNs) have recently emerged a...
The concept of neural network models (NNM) is a statistical strategy which can be used if a superpos...
Currently, global warming is the leading source of climate pollution due to the release of CO2 and o...
Time-series profiles derived from temperature proxies such as tree rings can provide information abo...
This study presents a new methodology for improving forecasts of current monthly, regional precipita...
Abstract We present a significantly improved data‐driven global weather forecasting framework using ...