2019
DOI: 10.1016/j.ijpe.2018.06.016
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Incorporating macroeconomic leading indicators in tactical capacity planning

Abstract: Tactical capacity planning relies on future estimates of demand for the mid-to long-term. On these forecast horizons there is increased uncertainty that the analysts face. To this purpose, we incorporate macroeconomic variables into microeconomic demand forecasting. Forecast accuracy metrics, which are typically used to assess improvements in predictions, are proxies of the real decision associated costs. However, measuring the direct impact on decisions is preferable. In this paper, we examine the capacity pl… Show more

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Cited by 16 publications
(16 citation statements)
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“…The next step was to classify the retention stock/holding inventory into the active, inactive, and dead inventory through statistical assessment as per the laid down criteria [ 34 ]. This classification ( Table 3 ) helps organizations; (1) to maintain control over the critical items with vast sums of capital invested in them (2) to ensure that the inventory turnover ratio is methodically maintained at a reasonably higher level through systematic control of holding stock (3) to make sure optimum levels of inventory is preserved at all times [ 23 ]. At stage-2, the outcomes of fault trend analysis ( Fig 3 ) are used to determine the frequencies of multiple faults to identify the related spares requirement and inventory trend.…”
Section: Results Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…The next step was to classify the retention stock/holding inventory into the active, inactive, and dead inventory through statistical assessment as per the laid down criteria [ 34 ]. This classification ( Table 3 ) helps organizations; (1) to maintain control over the critical items with vast sums of capital invested in them (2) to ensure that the inventory turnover ratio is methodically maintained at a reasonably higher level through systematic control of holding stock (3) to make sure optimum levels of inventory is preserved at all times [ 23 ]. At stage-2, the outcomes of fault trend analysis ( Fig 3 ) are used to determine the frequencies of multiple faults to identify the related spares requirement and inventory trend.…”
Section: Results Discussionmentioning
confidence: 99%
“…Numerous collaborative inventory management models tend to focus on the inventory decisions made by organizations participating in different cooperative programs, such as CRP, ECR, QR, and VMI. However, collaboration is a decision-making process that includes inter-dependent firms [ 23 , 24 ].…”
Section: Theoretical Backgroundmentioning
confidence: 99%
“…Nonetheless, in the literature, there are papers that have questioned this assumption, and arguing for directly using stock control metrics in the context of inventory management (for examples see, Gardner, 1990a;Boylan, 2005, 2006;Teunter and Duncan, 2009;Syntetos et al, 2010;Kourentzes, 2013;Syntetos et al, 2015a;Sagaert et al, 2018).…”
Section: Background Researchmentioning
confidence: 99%
“…Indirectly, a reasonable approximation of the data generating process is still required, but one has to note that this is less straightforward than in the conventional case. For example, consider operational production planning, where a consistent forecast across time may be more beneficial than a very accurate, but volatile, forecast (Sagaert et al, 2018;Fildes and Kingsman, 2011). Nonetheless, if the quality of the forecast is very poor, then that impacts negatively on the operations.…”
Section: Optimising Directly On Inventory Performancementioning
confidence: 99%
“…Nonetheless, in the literature, there are papers that have questioned this assumption, and arguing for directly using stock control metrics in the context of inventory management (for examples see, Gardner Jr, 1990;Boylan, 2005, 2006;Teunter and Duncan, 2009;Syntetos et al, 2010;Kourentzes, 2013;Syntetos et al, 2015;Sagaert et al, 2018). Substantial work has been done in the intermittent demand literature, where forecast evaluation is problematic when using conventional error metrics (Kolassa, 2016).…”
Section: Research Backgroundmentioning
confidence: 99%