Developing a Chemical Database for Resolving Enviromental Issues in the Petrochemical Industry in Nigeria

A. Ekperusi, Anthonia Ejiroghene Gbuvboro
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Abstract

Petrochemical exploration in Nigeria poses a significant threat to the environment, health and livelihoods of local people. The inability to find a holistic solution to address amicably the issues associated with oil and gas exploration and production has resulted in an unending wave of tension, crises and countless legal battles between communities and oil operators. This development is further complicated by the lack of adequate capacity on the part of regulators in the sector. The situation has forced some oil operators to move their operations from land and shallow waters into the deep sea with the hope to reduce hostilities within operational facilities and conflict with local people. Despite efforts to have a better understanding among the stakeholders, particularly oil operators and local communities, environmental issues persist creating mistrust between parties. Developing a chemical database with a comprehensive contaminants profile in the petrochemical industry would improve the management of chemical spills and associated issues and bring some level of fairness to conflict resolution in the sector.
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为解决尼日利亚石化工业的环境问题建立化学数据库
尼日利亚的石油化工勘探对当地人民的环境、健康和生计构成重大威胁。由于无法找到一个整体的解决方案来友好地解决与油气勘探和生产相关的问题,导致了社区和石油运营商之间无休止的紧张局势、危机和无数的法律纠纷。由于该行业监管机构缺乏足够的能力,这种发展进一步复杂化。这种情况迫使一些石油运营商将他们的作业从陆地和浅水转移到深海,希望减少作业设施内的敌对行动以及与当地人民的冲突。尽管各方(尤其是石油运营商和当地社区)努力增进了解,但环境问题仍然存在,导致各方之间互不信任。在石化工业中建立一个包含全面污染物概况的化学数据库将改善对化学泄漏和相关问题的管理,并在一定程度上公平地解决该部门的冲突。
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