Marine litter poses numerous threats to the global environment. To estimate the social costs of marine litter in China, two stated preference methods, namely the contingent valuation model (CVM) and the choice experiment model (CEM), were used in this research. This paper conducted surveys at ten different beaches along the East China Sea in Zhejiang province in October 2017. The results indicate that approximately 74.1% of the interviewees are willing to volunteer to participate in clean-up programmes and are willing to spend 1.5 days per month on average in their daily lives, which equates to a potential loss of income of USD 1.08 per day. The willingness to pay for the removal of the main types of litter ranges from USD 0.12–0.20 per visitor across the four sample cities, which is mainly determined by the degree of the removal, the crowdedness of the beach and the visitor’s perception. The social costs are USD 1.08–1.40 per visitor when the contingent valuation method is applied and USD 1.00–1.07 per visitor when the choice experiment method is adopted, which accounts for 8–14% of the beach entrance fee. The analysis of the social costs of marine litter yielded some useful implications regarding future coastal management policy, including extra entrance fee, the quality-oriented environmental strategy and more incentives to volunteers.
Journal of Vacuum Science & Technology (JVST) serial journals are the official publications of American Vacuum Society. We search the nanotechnology-related references on JVST and obtain visual maps through a visual analysis tool, CiteSpace. The visual maps can help us understand the distribution of research institutions and cooperation, high-impact authors, core literatures, research hotspots and fronts of nanotechnology in the field of vacuum.
Valuing water is difficult and contentious owing to water’s physical, political, and economic characteristics. Combining household-level and county-level data at the county level could clarify the responsibilities of both the government and users. In the Thousand Island Lake Water Distribution Project (TILWDP), the upstream ecosystem services provider, Chunan County, is assumed to sustain a tremendous opportunity cost due to the extremely strict environmental protection requirements of the project. To estimate the opportunity cost of supplying fresh water that meets the standards of the National Primary Drinking Water Regulations, a synthetic control model is introduced, and county-level macroeconomic data are used. A funding gap was estimated in the current government-financed situation. Meanwhile, willingness to pay is calculated based on household-level data collected in the downstream area. The estimate indicates that the combination of ecological compensation payments from governments and downstream stakeholders’ willingness to pay for water services could completely cover the upstream service provider’s opportunity cost. Specifically, the related central and downstream governments would need to take on approximately 1/3 of the total cost, while the users from the downstream area would take on the rest. The proposed policies include adopting government–user joint-financing payment for ecosystem services (PES) schemes for regional ecological and environmental cooperation in China, implementing diversified payment vehicles, launching additional environmental education projects, etc.
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