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Development of hourly probabilistic utility NO_x emission inventories using time series techniques: Part Ⅰ―univariate approach

机译:利用时间序列技术建立每小时概率效用NO_x排放量清单:第一部分-单变量方法

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Historical data regarding hourly variability in coal-fired power plant unit emissions based upon continuous emission monitoring enables estimation of the likely range of possible values in the near future for purposes of air quality modeling. Analyses were conducted for 32 units for a base case in 1995, an alternative 1998 case, and a 2007 future scenario case. Hourly inter-unit uncertainty was assumed to be independent. Univariate stochastic time series models were employed to quantify hourly uncertainty in capacity and emission factors. Ordinary least-squares regression models were used to quantify hourly uncertainty in heat rate. The models were used to develop an hourly probabilistic emission inventory for a 4-day period. There was significant autocorrelation for time lags 1, 2, 23, and 24 for the capacity and emission factor and a 24 h cyclical pattern for the capacity factor. The uncertainty ranges for hourly emissions were found to vary for different hours of the day, with 95% probability ranges of typically +- 20-40% of the mean. For the 1995 case, the 95% confidence interval for the daily inventory was 510-633 t/d, representing approximately +- 10% uncertainty with respect to the average value of 576 t/d. Inter-annual changes in the mean and variability were assessed by comparison of 1998 data with 1995 data. The daily inventory for the 2007 scenario had an uncertainty range of +-8% of the average value of 175 t/d. The substantial autocorrelation in capacity and emission factor, and the cyclic effect for capacity factor, indicate the importance of accounting for time series effects in estimation of uncertainty in hourly emissions. Additional work is recommended to account for inter-unit dependence, which is addressed in Part 2.
机译:基于连续排放监测的有关燃煤电厂单位排放小时变化的历史数据,可以在不久的将来估算出可能值的可能范围,以进行空气质量建模。针对1995年的基本案例,1998年的替代案例和2007年的未来情景案例,对32个单位进行了分析。单位时间内的不确定性被认为是独立的。单变量随机时间序列模型用于量化容量和排放因子的每小时不确定性。普通的最小二乘回归模型用于量化每小时加热率的不确定性。这些模型用于建立为期4天的每小时概率排放清单。容量和排放因子的时间滞后1、2、23和24存在显着的自相关,容量因子的存在24 h周期性模式。发现每小时排放量的不确定性范围在一天的不同小时内会有所不同,其中95%的概率范围通常为平均值的20%至40%。对于1995年的案例,每日库存量的95%置信区间为510-633 t / d,相对于576 t / d的平均值而言,约有10%的不确定性。通过将1998年的数据与1995年的数据进行比较,评估了均值和变异性的年际变化。 2007年情景的每日库存不确定性范围为175吨/天平均值的+ -8%。容量和排放因子之间的显着自相关,以及容量因子的循环效应,表明在估计小时排放的不确定性时考虑时间序列效应的重要性。建议进行其他工作以解决单元间的依赖性,这在第2部分中进行了介绍。

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