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新的地震概率模型可预测地震历史 快报文章
地球科学快报,2023年第2期
作者:  王晓晨
Microsoft Word(13Kb)  |  收藏  |  浏览/下载:568/0  |  提交时间:2023/01/27
Earthquake history  Earthquake probability model  
Backward Probability Model for Identifying Multiple Contaminant Source Zones Under Transient Variably Saturated Flow Conditions 期刊论文
WATER RESOURCES RESEARCH, 2020, 56 (4)
作者:  Hwang, Hyoun-Tae;  Jeen, Sung-Wook;  Kaown, Dugin;  Lee, Seong-Sun;  Sudicky, Edward A.;  Steinmoeller, Derek T.;  Lee, Kang-Kun
收藏  |  浏览/下载:7/0  |  提交时间:2020/07/02
backward probability model  source zone identifications  transient flow  vadose zone  uncertainty analysis  HydroGeoSphere  
Precipitation Probability and Its Future Changes From a Global Cloud-Resolving Model and CMIP6 Simulations 期刊论文
JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2020, 125 (5)
作者:  Na, Ying;  Fu, Qiang;  Kodama, Chihiro
收藏  |  浏览/下载:6/0  |  提交时间:2020/07/02
precipitation probability  climate change  cloud-resolving model  
A distributional code for value in dopamine-based reinforcement learning 期刊论文
NATURE, 2020, 577 (7792) : 671-+
作者:  House, Robert A.;  Maitra, Urmimala;  Perez-Osorio, Miguel A.;  Lozano, Juan G.;  Jin, Liyu;  Somerville, James W.;  Duda, Laurent C.;  Nag, Abhishek;  Walters, Andrew;  Zhou, Ke-Jin;  Roberts, Matthew R.;  Bruce, Peter G.
收藏  |  浏览/下载:61/0  |  提交时间:2020/07/03

Since its introduction, the reward prediction error theory of dopamine has explained a wealth of empirical phenomena, providing a unifying framework for understanding the representation of reward and value in the brain(1-3). According to the now canonical theory, reward predictions are represented as a single scalar quantity, which supports learning about the expectation, or mean, of stochastic outcomes. Here we propose an account of dopamine-based reinforcement learning inspired by recent artificial intelligence research on distributional reinforcement learning(4-6). We hypothesized that the brain represents possible future rewards not as a single mean, but instead as a probability distribution, effectively representing multiple future outcomes simultaneously and in parallel. This idea implies a set of empirical predictions, which we tested using single-unit recordings from mouse ventral tegmental area. Our findings provide strong evidence for a neural realization of distributional reinforcement learning.


Analyses of single-cell recordings from mouse ventral tegmental area are consistent with a model of reinforcement learning in which the brain represents possible future rewards not as a single mean of stochastic outcomes, as in the canonical model, but instead as a probability distribution.


  
Constraint on the matter-antimatter symmetry-violating phase in neutrino oscillations 期刊论文
NATURE, 2020, 580 (7803) : 339-+
作者:  Houben, Lothar;  Weissman, Haim;  Wolf, Sharon G.;  Rybtchinski, Boris
收藏  |  浏览/下载:16/0  |  提交时间:2020/07/03

The charge-conjugation and parity-reversal (CP) symmetry of fundamental particles is a symmetry between matter and antimatter. Violation of this CP symmetry was first observed in 1964(1), and CP violation in the weak interactions of quarks was soon established(2). Sakharov proposed(3) that CP violation is necessary to explain the observed imbalance of matter and antimatter abundance in the Universe. However, CP violation in quarks is too small to support this explanation. So far, CP violation has not been observed in non-quark elementary particle systems. It has been shown that CP violation in leptons could generate the matter-antimatter disparity through a process called leptogenesis(4). Leptonic mixing, which appears in the standard model'  s charged current interactions(5,6), provides a potential source of CP violation through a complex phase dCP, which is required by some theoretical models of leptogenesis(7-9). This CP violation can be measured in muon neutrino to electron neutrino oscillations and the corresponding antineutrino oscillations, which are experimentally accessible using accelerator-produced beams as established by the Tokai-to-Kamioka (T2K) and NOvA experiments(10,11). Until now, the value of dCP has not been substantially constrained by neutrino oscillation experiments. Here we report a measurement using long-baseline neutrino and antineutrino oscillations observed by the T2K experiment that shows a large increase in the neutrino oscillation probability, excluding values of dCP that result in a large increase in the observed antineutrino oscillation probability at three standard deviations (3 sigma). The 3 sigma confidence interval for delta(CP), which is cyclic and repeats every 2p, is [-3.41, -0.03] for the so-called normal mass ordering and [-2.54, -0.32] for the inverted mass ordering. Our results indicate CP violation in leptons and our method enables sensitive searches for matter-antimatter asymmetry in neutrino oscillations using accelerator-produced neutrino beams. Future measurements with larger datasets will test whether leptonic CP violation is larger than the CP violation in quarks.


  
Multi-model skill assessment of seasonal temperature and precipitation forecasts over Europe 期刊论文
CLIMATE DYNAMICS, 2019, 52: 4207-4225
作者:  Mishra, Niti;  Prodhomme, Chloe;  Guemas, Virginie
收藏  |  浏览/下载:4/0  |  提交时间:2019/11/26
Seasonal climate forecast  Probability Ensemble Forecast  Weighted Multi-Model  Forecast Verification  
Propagation of climate model biases to biophysical modelling can complicate assessments of climate change impact in agricultural systems 期刊论文
INTERNATIONAL JOURNAL OF CLIMATOLOGY, 2019, 39 (1) : 424-444
作者:  Liu, De Li;  Wang, Bin;  Evans, Jason;  Ji, Fei;  Waters, Cathy;  Macadam, Ian;  Yang, Xihua;  Beyer, Kathleen
收藏  |  浏览/下载:7/0  |  提交时间:2019/04/09
APSIM  bias correction  bias propagation  bio-physical crop model  NARCliM  rainfall intensity  rainfall probability  RCMs  wheat cropping system  
Predicting geogenic Arsenic in Drinking Water Wells in Glacial Aquifers, North-Central USA: Accounting for Depth-Dependent Features 期刊论文
WATER RESOURCES RESEARCH, 2018, 54 (12) : 10172-10187
作者:  Erickson, M. L.;  Elliott, S. M.;  Christenson, C. A.;  Krall, A. L.
收藏  |  浏览/下载:7/0  |  提交时间:2019/04/09
groundwater  arsenic  probability model  geochemistry  machine learning  domestic well