Entropy Applications to Water Monitoring Network Design: A Review
Abstract
:1. Introduction
2. Definitions of Entropy Terms as Applied to Water Monitoring Networks
2.1. Entropy Concept
2.2. Marginal Entropy
2.3. Multivariate Joint Entropy
2.4. Conditional Entropy
2.5. Transinformation
2.6. Total Correlation
2.7. Other Entropy Terms
3. Applications of Entropy to Water Monitoring Network Design
3.1. Precipitation Networks
3.2. Streamflow and Water Level Networks
3.3. Soil Moisture and Groundwater Networks
3.4. Water Quality Networks
3.5. Integrated Network Design
4. Conclusions and Recommendations
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Authors/Year | Network Types | Study Areas | Methods/Entropy Measures | Key Findings |
---|---|---|---|---|
Alameddine et al., 2013 [24] | Water quality | Neuse River Estuary, NC, USA | -Total system entropy -Standard violation entropy -Multiple attribute decision making process -Analytical hierarchical process | -Networks designed using total system entropy and violation entropy of dissolved oxygen were similar -When measured water quality parameters have a low probability of violating water quality standards, their violation entropy is less informative |
Alfonso et al., 2010 [25] | Water level | Pijnacker Region, The Netherlands | -Directional information transfer (DIT) | -Introduced total correlation for determining multivariate dependence in water monitoring network design -Information content and redundancy is dependent on the DIT between monitoring stations (DITXY or DITYX) |
Alfonso et al., 2010 [26] | Water level | Pijnacker Region, The Netherlands | -Max(Joint Entropy) min(Total Correlation) -Non-dominated Sorting Genetic Algorithm II (NSGA-II) | -Total correlation should be combined with joint entropy to get most information out of monitoring network |
Alfonso et al., 2013 [27] | Streamflow | Magdalena River, Colombia | -Max(Joint Entropy) min(Total Correlation) -Rank-based iterative approach | -Rank method is useful in finding extremes on Pareto front -When iteratively selecting stations, the information content of the network is not guaranteed to be maximum if the network contains the station with the most information |
Alfonso et al., 2014 [28] | Water level | North Sea, The Netherlands | -Max(Joint Entropy) min(Total Correlation) -Ensemble entropy -NSGA-II | -By creating an ensemble of solutions through varying the bin size of the initial Pareto optimal solution set, the authors highlight the uncertainty related to choosing bin size |
Boroumand and Rajaee, 2017 [29] | Water quality | San Francisco Bay, CA, USA | -Transinformation-distance (T-D) curve | -Using T-D curve they were able to reduce the network from 37 to 21 monitoring stations. -New network covered entire study area without having redundant data |
Brunsell, 2010 [30] | Precipitation | Continental United States | -Relative entropy -Wavelet multi-resolution analysis | -The temporal scaling regions identified (1) synoptic, (2) monthly to annual, (3) interannual patterns -Little correlation between relative entropy and annual precipitation except for breakpoint at 95° W Lat |
Fahle et al., 2015 [31] | Water level/Groundwater level | Spreewald region, Germany | -MIMR, max(Joint Entropy + Transinformation − Total Correlation) -Subsets of time series data | -Found using subsets of the available time series data could better identify important stations -Showed water levels across network react similarly during high precipitation and are more unique during dry periods -Consequently method can allow for design of network which focuses on floods or droughts |
Hosseini and Kerachian, 2017 [32] | Groundwater level | Dehgolan plain, Iran | -Marginal entropy -Data fusion of spatiotemporal kriging and ANN model -Value of information (VOI) | -Network reduction from 52 to 42 (35 high priority and 7 low priority) stations while standard deviation of average estimation error variance stayed the same -Found sampling frequency of high priority stations should be every 20 days and low priority should be every 32, based on analysis of stations selected using VOI |
Hosseini and Kerachian, 2017 [33] | Groundwater level | Dehgolan plain, Iran | -Bayesian maximum entropy (BME) -Multi-criteria decision making based on ordered weighted averaging | -Network reduction from 52 to 33 stations while standard deviation of average estimation error variance stayed the same -Sampling frequency increased from 4 weeks to 5 weeks |
Keum and Coulibaly, 2017 [34] | Precipitation/Streamflow | Columbia River basin, BC, Canada. Southern Ontario, Canada | -Dual Entropy and Multiobjective Optimization (DEMO) to max(Joint Entropy) and min(Total Correlation) | -Found that networks obtain significant amount of information from 5 to 10 years of data periods, and total correlation tends to be stabilized within 5 years by applying daily time series -Recommended minimum 10 years data periods for designing precipitation or streamflow networks using daily time series |
Keum and Coulibaly, 2017 [35] | Integrated | Southern Ontario, Canada | -DEMO to max(Joint Entropy), min(Total Correlation), and max(Conditional Entropy) -Sturge, Scott and rounding binning methods | -Precipitation and streamflow networks were designed simultaneously. -Binning methods were compared and concluded that the optimal networks can be altered due to the binning methods |
Kornelsen and Coulibaly, 2015 [36] | Soil Moisture | Great Lakes Basin, Canada-USA | -DEMO to Max(Joint Entropy) min(Total Correlation) -SMOS satellite data | -Optimum networks were different for ascending and descending overpasses -Combining overpass data resulted in complimentary spatial distribution of stations |
Leach et al., 2015 [37] | Streamflow | Columbia River basin, BC, Canada. Southern Ontario, Canada | -DEMO to Max(Joint Entropy) min(Total Correlation) -Streamflow signatures -Indicators of hydrologic alteration (IHA) | -Found that including streamflow signatures as design objective increases network coverage in headwater areas. -Found including IHAs increases network coverage in downstream and urban areas. |
Leach et al., 2016 [38] | Groundwater level | Southern Ontario, Canada | -DEMO to Max(Joint Entropy) min(Total Correlation) -Annual recharge | -Found that considering spatial distribution of annual recharge can improve network coverage |
Lee, 2013 [39] | Water quality | Hagye Basin, South Korea | -Marginal entropy analogous cost function -Genetic algorithm | -Developed computationally efficient way to design a monitoring network in an ungauged basin |
Lee et al., 2014 [40] | Water quality | Sanganmi Basin, South Korea | -Multivariate transinformation -Genetic algorithm | -Developed method based on maximizing information content to design a water quality monitoring network in a sewer system |
Li et al., 2012 [41] | Streamflow/Water level | Brazos River basin, USA. Pijnacker, The Netherlands | -MIMR, max(Joint Entropy + Transinformation − Total Correlation) | -Developed maximum information minimum redundancy method (MIMR) -Found it to better at locating high information content stations for a monitoring network |
Mahjouri and Kerachian, 2011 [42] | Water quality | Jajrood River, Iran | -Information transfer index (ITI) distance and time curves -Micro genetic algorithm (MGA) | -The MGA was used to find the optimal combination of monitoring stations which minimize the temporal and spatial ITI -Found that the sampling frequency and number of stations could be increased in the monitoring network |
Mahmoudi-Meimand et al., 2016 [43] | Precipitation | Karkheh, Iran | -Transinformation entropy -Kriging error variance -Weighted cost function to select from Monte Carlo generated networks | -Consideration of spatial analysis error and transinformation entropy improved network design |
Masoumi and Kerachian, 2010 [44] | Groundwater quality | Tehran, Iran | -Transinformation-distance (T-D) curve -Transinformation-time (T-T) curve -C-mean clustering -Hybrid genetic algorithm (HGA) | -Developed different T-D curves based on homogeneous clusters of existing monitoring stations -Used HGA to find optimal network with maximum spatial coverage and minimum transinformation -Showed that sampling frequency could be optimized in the same way |
Memarzadehet al., 2013 [45] | Water quality | Karoon River, Iran | -Information transfer index (ITI) distance curve -Homogenous zone clustering -Dynamic factor analysis (DFA) | -Increased monitoring network without increasing redundant information |
Mishra and Coulibaly, 2010 [46] | Streamflow | Selected basins across Canada | -Transinformation index -Marginal, joint, and transinformation | -Used information theory to highlight critical areas across Canada in need of monitoring -Found that several watersheds are information deficient and would benefit from increased monitoring |
Mishra and Coulibaly, 2014 [47] | Streamflow | Selected basins across Canada | -Transinformation index -Seasonal streamflow information (SSI) | -Evaluated and highlighted the effects of seasonal climate on streamflow network design |
Mondal and Singh, 2012 [48] | Groundwater level | Kodaganar River basin, India | -Marginal entropy, joint entropy, transinformation -Information transfer index (ITI) | -Identified high priority monitoring stations using marginal entropy -ITI was used to evaluate monitoring network, showed that it could be reduced |
Samuel et al., 2013 [49] | Streamflow | St. John and St. Lawrence River basins, Canada | -Combined Regionalization-DEMO -Max(Joint Entropy) min(Total Correlation) | -Proposed combined regionalization dual entropy multi-objective optimization approach to design of minimum optimal network that meets World Meteorological Organization (WMO) guidelines -Found that the location of new monitoring stations added to a network depends on the current network density |
Santos et al., 2013 [50] | Precipitation | Portugal | -ANN sensitivity analysis -Mutual Information criteria -K-means with Euclidean distance | -Compared three clustering methods to reduce station density -Best method was case dependent -All subset networks reproduced spatial precipitation pattern |
Stosic et al., 2017 [51] | Streamflow | Brazos River, TX, USA | -Joint permutation entropy | -Used joint permutation entropy to account for ordering of time series data to better account for station information -Found that the most efficient measurement window was seven days when compared to daily and monthly |
Su and You, 2014 [52] | Precipitation | Shihmen Reservoir Taiwan | -Developed 2D transinformation-distance (T-D) model -T-D model used to interpolate network information | -Network designed by maximizing additional information provided by station given regionalized transinformation -Temporal scale has significant influence on information delivery |
Uddameri and Andruss, 2014 [53] | Groundwater level | Victoria County Groundwater Conservation District, TX, USA | -Marginal entropy -Monitoring priority index (MPI) | -Compared MPI found using kriging to MPI found using marginal entropy -Showed entropy derived MPI to be more conservative measure |
Wei et al., 2014 [54] | Precipitation | Taiwan University Experimental Forest, Taiwan | -Joint Entropy of hourly, monthly, dry/wet months and annual rainfall at 1, 3, 5 km grids | -Station priority changes at different spatiotemporal scales -Temporal scales have more significant changes on joint entropy values than spatial scales -Long time and short spatial scales require fewer stations for stable joint entropy |
Werstuck and Coulibaly, 2016 [55] | Streamflow | Ottawa River Basin, Canada | -Transinformation index -DEMO to Max(Joint Entropy) min(Total Correlation)-Streamflow signatures -Indicators of hydrologic alteration (IHA) | -Compared regionalized data from McMaster University-Hydrologiska Byråns Vattenbalansavdelnin (MAC-HBV) and Inverse Distance Weighting—Drainage Area Ratio (IDW-DAR) and found IDW-DAR to be more adequate for generating synthetic time series for potential monitoring stations -Critical areas highlighted by TI index method were the same areas where additional stations were added using DEMO method |
Werstuck and Coulibaly,2017 [56] | Streamflow | Ottawa River Basin, Canada | -Transinformation index -DEMO to max(Joint Entropy) min(Total Correlation) | -Transinformation index analysis is not significantly affected by scaling -Scaling effects are noticeable when DEMO method was applied |
Xu et al., 2015 [57] | Precipitation | Xiangjiang River Basin, China | -Mutual Information (MI) of rain gauges -Designed network by min(Σ[MI]), min(bias), max(NSE) -Resampled rainfall used in Xinanjiang and SWAT models | -Lumped model performance was stable with different Pareto optimal networks -Distributed model performance improves with number of stations |
Yakirevich et al., 2013 [58] | Groundwater quality | OPE3 research site, Maryland, USA | -Principle of minimum cross entropy (POMCE) -Hydrus-3D | -Using POMCE with two variants of Hydrus-3D, additional monitoring stations were added where the difference between the models was greatest |
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Keum, J.; Kornelsen, K.C.; Leach, J.M.; Coulibaly, P. Entropy Applications to Water Monitoring Network Design: A Review. Entropy 2017, 19, 613. https://doi.org/10.3390/e19110613
Keum J, Kornelsen KC, Leach JM, Coulibaly P. Entropy Applications to Water Monitoring Network Design: A Review. Entropy. 2017; 19(11):613. https://doi.org/10.3390/e19110613
Chicago/Turabian StyleKeum, Jongho, Kurt C. Kornelsen, James M. Leach, and Paulin Coulibaly. 2017. "Entropy Applications to Water Monitoring Network Design: A Review" Entropy 19, no. 11: 613. https://doi.org/10.3390/e19110613
APA StyleKeum, J., Kornelsen, K. C., Leach, J. M., & Coulibaly, P. (2017). Entropy Applications to Water Monitoring Network Design: A Review. Entropy, 19(11), 613. https://doi.org/10.3390/e19110613