Dynamic adaptation of water resources systems under uncertainty by learning policy structure and indicators

Author(s):  
Jonathan S. Cohen ◽  
Jonathan D. Herman
2021 ◽  
Author(s):  
Jonathan Herman ◽  
Jonathan Cohen

<p>Water resources systems face a wide range of uncertainty in future hydroclimatic and socio-economic conditions, justifying an adaptive planning approach. Recent advances in dynamic adaptation have designed policies in which infrastructure and management actions are triggered by thresholds of indicator variables monitored over time. Typically, one or more of these components are prespecified, constraining the flexibility of policy design and evaluation. The opportunity exists for methods to identify policies combining the most relevant indicators, actions, and thresholds for dynamic adaptation to climate change. Here we present a generalized framework based on multi-objective policy tree optimization, a heuristic policy search method in which adaptation policies are represented as binary trees. We demonstrate this approach using an illustrative water resources planning problem in California where infrastructure expansion, reservoir operations, conservation rules, and conjunctive use are adapted over time to balance flood risk, water supply, and environmental objectives. To capture the uncertainty in nonstationary forcing, indicator variables include long-term hydroclimatic statistics from downscaled GCM projections along with uncertain land use and economic conditions. Policy robustness is determined by validation against a held-out scenario ensemble. A key focus of the results is comparing the indicators and actions selected by robust versus non-robust policies to identify cases where policies adapt to a signal rather than noise. This framework is supported by open source software and is generalizable across water resources systems challenged with adaptive planning under climate uncertainty.</p>


Eos ◽  
1971 ◽  
Vol 52 (6) ◽  
pp. IUGG305
Author(s):  
Harry E. Schwarz

2019 ◽  
Author(s):  
Andrew R. Slaughter ◽  
Saman Razavi

Abstract. The assumption of stationarity in water resources no longer holds, particularly within the context of future climate change. Plausible scenarios of flows that fluctuate outside the envelope of variability of the gauging data are required to assess the robustness of water resources systems to future conditions. This study presents a novel method of generating weekly-time-step flows based on tree-ring chronology data. Specifically, this method addresses two long-standing challenges with paleo-reconstruction: (1) the typically limited predictive power of tree-ring data at the annual and sub-annual scale, and (2) the inflated short-term persistence in tree-ring time series and improper use of prewhitening. Unlike the conventional approach, this method establishes relationships between tree-ring chronologies and naturalised flow at a biennial scale to preserve persistence properties and variability of hydrological time series. Biennial flow reconstructions are further disaggregated to weekly, according to the weekly flow distribution of reference two-year instrumental periods, identified as periods with broadly similar tree-ring properties to that of every two-year paleo-period. The Saskatchewan River Basin (SaskRB), a major river in Western Canada, is selected as a study area, and weekly flows in its four major tributaries are extended back to the year 1600. The study shows that the reconstructed flows properly preserve the statistical properties of the reference flows, particularly, short- to long-term persistence and the structure of variability across time scales. An ensemble approach is presented to represent the uncertainty inherent in the statistical relationships and disaggregation method. The ensemble of reconstructed weekly flows are publically available for download from https://doi.org/10.20383/101.0139 (Slaughter and Razavi, 2019).


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