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Boosting large-scale river connectivity restoration by planning for the presence of unrecorded barriers
Authors:Christina T Ioannidou  Thomas M Neeson  Jesse R O'Hanley
Institution:1. Kent Business School, University of Kent, Canterbury, UK;2. Department of Geography and Environmental Sustainability, University of Oklahoma, Norman, Oklahoma, USA
Abstract:Conservation decisions are invariably made with incomplete data on species’ distributions, habitats, and threats, but frameworks for allocating conservation investments rarely account for missing data. We examined how explicit consideration of missing data can boost return on investment in ecosystem restoration, focusing on the challenge of restoring aquatic ecosystem connectivity by removing dams and road crossings from rivers. A novel way of integrating the presence of unmapped barriers into a barrier optimization model was developed and applied to the U.S. state of Maine to maximize expected habitat gain for migratory fish. Failing to account for unmapped barriers during prioritization led to nearly 50% lower habitat gain than was anticipated using a conventional barrier optimization approach. Explicitly acknowledging that data are incomplete during project selection, however, boosted expected habitat gains by 20–273% on average, depending on the true number of unmapped barriers. Importantly, these gains occurred without additional data. Simply acknowledging that some barriers were unmapped, regardless of their precise number and location, improved conservation outcomes. Given incomplete data on ecosystems worldwide, our results demonstrate the value of accounting for data shortcomings during project selection.
Keywords:habitat restoration  hidden barriers  missing data  optimization  river connectivity  barreras ocultas  conectividad de ríos  datos faltantes  optimización  restauración del hábitat  栖息地恢复  河流连接度  缺失数据  隐性障碍  优化
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