@article{DuranRosal2016, author = "Antonio Manuel Dur{\'a}n-Rosal and C{\'e}sar Herv{\'a}s-Mart{\'i}nez and Antonio Javier Tall{\'o}n-Ballesteros and Alfonso Carlos Mart{\'i}nez-Estudillo and Sancho Salcedo-Sanz", abstract = "Abstract In this paper we tackle the problem of massive missing data reconstruction in ocean buoys, with an evolutionary product unit neural network (EPUNN). When considering a large number of buoys to reconstruct missing data, it is sometimes difficult to find a common period of completeness (without missing data on it) in the data to form a proper training and test set. In this paper we solve this issue by using partial reconstruction, which are then used as inputs of the EPUNN, with linear models. Missing data reconstruction in several phases or steps is then proposed. In this work we also show the potential of \{EPUNN\} to obtain simple, interpretable models in spite of the non-linear characteristic of the neural network, much simpler than the commonly used sigmoid-based neural systems. In the experimental section of the paper we show the performance of the proposed approach in a real case of massive missing data reconstruction in 6 wave-rider buoys at the Gulf of Alaska.", awards = "JCR(2016): 1.894 Position: 2/14 (Q1) Category: ENGINEERING, MARINE", comments = "JCR(2016): 1.894 Position: 2/14 (Q1) Category: ENGINEERING, MARINE", doi = "http://dx.doi.org/10.1016/j.oceaneng.2016.03.053", issn = "0029-8018", journal = "Ocean Engineering ", keywords = "Significant wave height, Missing values reconstruction, Product unit neural networks, Evolutionary algorithm", month = "May", note = "JCR(2016): 1.894 Position: 2/14 (Q1) Category: ENGINEERING, MARINE", pages = "292 - 301", title = "{M}assive missing data reconstruction in ocean buoys with evolutionary product unit neural networks ", url = "http://www.sciencedirect.com/science/article/pii/S0029801816300373", volume = "117", year = "2016", }