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首页> 外文期刊>Forestry >Assessment of allometric algorithms for estimating leaf biomass, leaf area index and litter fall in different-aged Sitka spruce forests
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Assessment of allometric algorithms for estimating leaf biomass, leaf area index and litter fall in different-aged Sitka spruce forests

机译:估测不同年龄锡特卡云杉林叶片生物量,叶面积指数和凋落物的异速生长算法的评估

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摘要

The relationship between leaf area and diameter at breast height (d.b.h.) or sapwood area (AS) has been used to estimate stand leaf area or biomass of forest canopies. It has been suggested that intra-specific variations in the relationship between stand leaf area and d.b.h. or AS can introduce a systematic error in these estimates for younger and older stands unless additional parameters relating to canopy structure are included in allometric functions. We collected data from a Sitka spruce chronosequence to parametrize and test different algorithms for the estimation of foliar biomass (FB) and litter inputs over a range of forest ages. FB estimates were significantly improved when additional biometric information relating to crown structure (canopy openness and height of live crown) was included in the models. Although the use of the relationship between leaf area and AS for the estimation of leaf area is justified by theoretical considerations (pipe model theory), we show that d.b.h. and other canopy parameters provided the most robust estimation of leaf area across different-aged stands. Our results also suggest that the accuracy of litter input estimates depends on needle retention time and annual turnover rate, particularly immediately before and after canopy closure.
机译:叶面积与胸高(d.b.h.)或边材面积(AS)处的直径之间的关系已用于估算林冠林的立叶面积或生物量。有人建议在林分叶面积与d.b.h之间的关系进行种内变化。否则AS可能会在这些评估中引入较年轻和较旧林分的系统误差,除非异速函数中包含与树冠结构有关的其他参数。我们从锡特卡云杉的时序序列中收集了数据,以进行参数设置,并测试了不同算法对不同森林年龄下的叶片生物量(FB)和垃圾输入量的估计。当模型中包含与冠结构有关的其他生物统计信息(冠冠张开度和活冠高度)时,FB估计值将大大改善。尽管通过理论上的考虑(管道模型理论)证明了使用叶面积和AS之间的关系来估计叶面积是合理的,但我们证明了d.b.h。其他冠层参数提供了对不同年龄林分中叶面积的最可靠估计。我们的结果还表明,垫料输入估算的准确性取决于针头保留时间和年周转率,尤其是在棚盖闭合之前和之后。

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