MECHANIZED LOGGING, MARKET HUNTING, AND A BANK LOAN IN CONGO

被引:98
作者
WILKIE, DS
SIDLE, JG
BOUNDZANGA, GC
机构
关键词
D O I
10.1046/j.1523-1739.1992.06040570.x
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Financing for logging of tropical moist forests in the Republic of Congo is commonly sought in the form of loans from multilateral development banks. Pressure from nongovernmental conservation organizations and from within the banks themselves bas resulted in their beginning to assess the environmental consequences of such loans. We conducted one of the first such assessments of an African Development Bank loan to a logging company. Geographic isolation, resulting transportation costs, and market demands have forced commercial loggers within the Sangha region of Congo to exploit only the most valuable timber. This form of timber extraction destroys an average of 6.8% of the canopy and thus, unlike clear cutting, was expected to have a minimal impact on wildlife populations. Line transect counts showed, however, that primate abundance was exceedingly low in logged forest. We believe this is not a direct consequence of canopy reduction, but results from the extremely intensive market bunting that coincides with timber surveying and extraction Weapons and hunting camps were common and logging company vehicles transported primates, duikers, and other game daily. Wildlife laws of Congo are openly violated and they are not enforced. While market bunting is clearly facilitated and intensified by the presence of logging concessions, it is the Congo's highly urbanized population that provides the ever growing demand for meat, a demand not being met through animal husbandry. Thus, although selective logging in the absence of hunting may have only limited adverse effects on wildlife, when the two are combined the consequences are grave for the Sangha region's wildlife. Loans to logging companies from the African Development Bank should incorporate conditions for ensuring wildlife conservation.
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页码:570 / 580
页数:11
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