Personal Name Authority Data Repository for Advancement Data-driven Research in Japanese History

Author(s):  
Taizo Yamada ◽  
Satoshi Inoue
Energies ◽  
2021 ◽  
Vol 14 (8) ◽  
pp. 2135
Author(s):  
Marcin Witczak ◽  
Marcin Mrugalski ◽  
Bogdan Lipiec

The paper presents a new method of predicting the remaining useful life of technical devices. The proposed soft computing approach bridges the gap between analytical and data-driven health prognostic approaches. Whilst the former ones are based on the classical exponential shape of degradation, the latter ones learn the degradation behavior from the observed historical data. As a result of the proposed fusion, a practical method for calculating components’ remaining useful life is proposed. Contrarily to the approaches presented in the literature, the proposed ensemble of analytical and data-driven approaches forms the uncertainty interval containing an expected remaining useful life. In particular, a Takagi–Sugeno multiple models-based framework is used as a data-driven approach while an exponential curve fitting on-line approach serves as an analytical one. Unlike conventional data-driven methods, the proposed approach is designed on the basis of the historical data that apart from learning is also applied to support the diagnostic decisions. Finally, the entire scheme is used to predict power Metal Oxide Field Effect Transistors’ (MOSFETs) health status. The status of the currently operating MOSFET is determined taking into consideration the knowledge obtained from the preceding MOSFETs, which went through the run-to-failure process. Finally, the proposed approach is validated with the application of real data obtained from the NASA Ames Prognostics Data Repository.


2021 ◽  
Author(s):  
Sadaf Nasreen ◽  
Markéta Součková ◽  
Mijael Rodrigo Vargas Godoy ◽  
Ujjwal Singh ◽  
Yannis Markonis ◽  
...  

Abstract. Since the beginning of this century, Europe has been experiencing severe drought events (2003, 2007, 2010, 2018, and 2019) which have had adverse impacts on various sectors, such as agriculture, forestry, water management, health, and ecosystems. During the last few decades, projections of the impact of climate change on hydroclimatic extremes were often capable of reproducing changes in the characteristics of these extremes. Recently, the research interest has been extended to include reconstructions of hydro-climatic conditions to provide historical context for present and future extremes. While there are available reconstructions of temperature, precipitation, drought indicators, or the 20th century runoff for Europe, long-term runoff reconstructions are still lacking (e.g, monthly or daily runoff series for short periods are commonly available). Therefore, we considered reconstructed precipitation and temperature fields for the period between 1500 and 2000 together with reconstructed scPDSI, natural proxy data, and observed runoff over 14~European catchments to calibrate and validate the semi-empirical hydrological model GR1A and two data-driven models (Bayesian recurrent and long short-term memory neural network). The validation of input precipitation fields revealed an underestimation of the variance across most of Europe. On the other hand, the data-driven models have been proven to correct this bias in many cases, unlike the semi-empirical hydrological model GR1A. The comparison to observed historical runoff data has shown a good match between the reconstructed and observed runoff and between the runoff characteristics, particularly deficit volumes. The reconstructed runoff is available via figshare, an open source scientific data repository under the DOI https://doi.org/10.6084/m9.figshare.15178107, (Sadaf et al., 2021).


2018 ◽  
Vol 12 (2) ◽  
Author(s):  
Amy M Pienta ◽  
Dharma Akmon ◽  
Justin Noble ◽  
Lynette Hoelter ◽  
Susan Jekielek

Social scientists are producing an ever-expanding volume of data, leading to questions about appraisal and selection of content given finite resources to process data for reuse. We analyze users’ search activity in an established social science data repository to better understand demand for data and more effectively guide collection development. By applying a data-driven approach, we aim to ensure curation resources are applied to make the most valuable data findable, understandable, accessible, and usable. We analyze data from a domain repository for the social sciences that includes over 500,000 annual searches in 2014 and 2015 to better understand trends in user search behavior. Using a newly created search-to-study ratio technique, we identified gaps in the domain data repository’s holdings and leveraged this analysis to inform our collection and curation practices and policies. The evaluative technique we propose in this paper will serve as a baseline for future studies looking at trends in user demand over time at the domain data repository being studied with broader implications for other data repositories.


2018 ◽  
Vol 33 (21) ◽  
pp. 3298-3314 ◽  
Author(s):  
Lauren “LB” Klein ◽  
Laurie M. Graham ◽  
Sarah Treves-Kagan ◽  
Premela G. Deck ◽  
Stephanie M. DeLong ◽  
...  

The U.S. Department of Education recently announced that existing legislation and guidance on campus sexual assault (CSA) policies had created a “failed system” in institutions of higher education. This announcement raises the question of how CSA legislation and guidance should be evaluated and applied in practice. We believe researchers are well situated to not only leverage data and empirically evaluate the success (or failure) of CSA federal and university policies but also to facilitate development of improved, more effective CSA policy. This commentary first chronicles the pivotal role of federal policy and guidance in driving the collection of CSA data and increasing research efforts in this domain. Second, we present recommendations for increased collaboration among researchers, practitioners, and policy makers aimed at measuring the effectiveness of current CSA policies and promoting data-driven policy. These recommendations focus on (a) establishing a CSA data repository, (b) analyzing existing CSA data to gain knowledge and identify opportunities for improved data collection, and (c) translating and disseminating CSA research to help bridge gaps between research, practice, and policy.


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