Lipen Wang
Katholieke Universiteit Leuven
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Publication
Featured researches published by Lipen Wang.
Water Science and Technology | 2013
Lipen Wang; Susana Ochoa-Rodriguez; N. Simões; Christian Onof; Cedo Maksimovic
The applicability of the operational radar and raingauge networks for urban hydrology is insufficient. Radar rainfall estimates provide a good description of the spatiotemporal variability of rainfall; however, their accuracy is in general insufficient. It is therefore necessary to adjust radar measurements using raingauge data, which provide accurate point rainfall information. Several gauge-based radar rainfall adjustment techniques have been developed and mainly applied at coarser spatial and temporal scales; however, their suitability for small-scale urban hydrology is seldom explored. In this paper a review of gauge-based adjustment techniques is first provided. After that, two techniques, respectively based upon the ideas of mean bias reduction and error variance minimisation, were selected and tested using as case study an urban catchment (∼8.65 km(2)) in North-East London. The radar rainfall estimates of four historical events (2010-2012) were adjusted using in situ raingauge estimates and the adjusted rainfall fields were applied to the hydraulic model of the study area. The results show that both techniques can effectively reduce mean bias; however, the technique based upon error variance minimisation can in general better reproduce the spatial and temporal variability of rainfall, which proved to have a significant impact on the subsequent hydraulic outputs. This suggests that error variance minimisation based methods may be more appropriate for urban-scale hydrological applications.
Journal of Hydrometeorology | 2015
Daniele Nerini; Zed Zulkafli; Lipen Wang; Christian Onof; Wouter Buytaert; Waldo Lavado-Casimiro; Jean-Loup Guyot
AbstractThis study compares two nonparametric rainfall data merging methods—the mean bias correction and double-kernel smoothing—with two geostatistical methods—kriging with external drift and Bayesian combination—for optimizing the hydrometeorological performance of a satellite-based precipitation product over a mesoscale tropical Andean watershed in Peru. The analysis is conducted using 11 years of daily time series from the Tropical Rainfall Measuring Mission (TRMM) Multisatellite Precipitation Analysis (TMPA) research product (also TRMM 3B42) and 173 rain gauges from the national weather station network. The results are assessed using 1) a cross-validation procedure and 2) a catchment water balance analysis and hydrological modeling. It is found that the double-kernel smoothing method delivered the most consistent improvement over the original satellite product in both the cross-validation and hydrological evaluation. The mean bias correction also improved hydrological performance scores, particularly...
Water Science and Technology | 2013
Fiona H. McRobie; Lipen Wang; Christian Onof; Stephen Kenney
The work presented here is a contribution to the Thames Water project of improving the Counters Creek catchment sewerage system in London. An increase in the number of floods affecting basements in the area has indicated the need for improvements to the system. The cost of such improvements could be very high, and as such it is important to determine whether the traditional approach of applying 30-year spatially uniform design storms results in substantial overestimation. The first step in this is to generate simulations of spatially distributed rainfall events, from which 30-year storms can be extracted. Storms are modelled as clusters of Gaussian rainfall cells, extending the earlier Willems method to radar rainfall data. The parameters describing the cells and their motion are sampled from probability distributions derived from parameter estimates gained from 45 historical storm events within the catchment for the period 2000-2011. This spatial-temporal stochastic rainfall generator produces a two-dimensional time series of simulated storm events, from which events of given return period can be identified.
Journal of Flood Risk Management | 2018
Susana Ochoa-Rodriguez; Lipen Wang; Laurie Thraves; Andy Johnston; Christian Onof
Following extensive surface water flooding (SWF) in England in summer 2007, progress has been made in improving the management and prediction of this type of flooding. A rainfall threshold-based extreme rainfall alert (ERA) service was launched in 2009 and superseded in 2011 by the surface water flood risk assessment (SWFRA). Through survey responses from local authorities (LAs) and the outcome of workshops with a range of flood professionals, this paper examines the understanding, benefits, limitations and ways to improve the current SWF warning service. The current SWFRA alerts are perceived as useful by district and county LAs, although their understanding of them is limited. The majority of LAs take action upon receipt of SWFRA alerts, and their reactiveness to alerts appears to have increased over the years and as SWFRA superseded ERA. This is a positive development towards increased resilience to SWF. The main drawback of the current service is its broad spatial resolution. Alternatives for providing localised SWF forecast and warnings were analysed, and a two-tier national-local approach, with pre-simulated scenario-based local SWF forecasting and warning systems, was deemed most appropriate by flood professionals given current monetary, human and technological resources.
Archive | 2018
Boud Verbeiren; Solomon Dagnachew Seyoum; Ihab Lubbad; Tian Xin; Marie-Claire ten Veldhuis; Christian Onof; Lipen Wang; Susana Ochoa-Rodriguez; Carina Veeckman; Michelle Boonen; Linda See; Dominique Nalpas; Barry O’Brien; Andy Johnston; Patrick Willems
FloodCitiSense aims at developing an urban pluvial flood early warning service for, but also by citizens and city authorities, building upon the state-of-the-art knowledge, methodologies and smart technologies provided by research units and private companies. FloodCitiSense targets the co-creation of this innovative public service in an urban living lab context with all local actors. This service will reduce the vulnerability of urban areas and citizens to pluvial floods, which occur when heavy rainfall exceeds the capacity of the urban drainage system. Due to their fast onset and localized nature, they cause significant damage to the urban environment and are challenging to manage. Monitoring and management of peak events in cities is typically in the hands of local governmental agencies. Citizens most often just play a passive role as people negatively affected by the flooding, despite the fact that they are often the ‘first responders’ and should therefore be actively involved. The FloodCitiSense project aims at integrating crowdsourced hydrological data, collaboratively monitored by local stakeholders, including citizens, making use of low-cost sensors and web-based technologies, into a flood early warning system. This will enable ‘citizens and cities’ to be better prepared for and better respond to urban pluvial floods. Three European pilot cities are targeted: Brussels – Belgium, Rotterdam – The Netherlands and Birmingham – UK.
Journal of Hydrology | 2015
Susana Ochoa-Rodriguez; Lipen Wang; Auguste Gires; Rui Daniel Pina; Ricardo Reinoso-Rondinel; G. Bruni; A. Ichiba; Santiago Gaitan; Elena Cristiano; Johan Van Assel; Stefan Kroll; Damian Murlà-Tuyls; Bruno Tisserand; Daniel Schertzer; Ioulia Tchiguirinskaia; Christian Onof; Patrick Willems; Marie-Claire ten Veldhuis
Natural Hazards and Earth System Sciences | 2012
M. Evers; Andreja Jonoski; Cedo Maksimovic; L. Lange; S. Ochoa Rodriguez; A. Teklesadik; J. Cortes Arevalo; Adrian Almoradie; N. Eduardo Simões; Lipen Wang; Christos Makropoulos
Water | 2015
N. Simões; Susana Ochoa-Rodriguez; Lipen Wang; Rui Daniel Pina; Alfeu Sá Marques; Christian Onof; João P. Leitão
Journal of Hydrology | 2015
Lipen Wang; Susana Ochoa-Rodriguez; Johan Van Assel; Rui Daniel Pina; Mieke Pessemier; Stefan Kroll; Patrick Willems; Christian Onof
Hydrology and Earth System Sciences | 2015
Lipen Wang; Susana Ochoa-Rodriguez; Christian Onof; Patrick Willems