Dynamic pricing strategies for efficient inventory management with auto-correlative stochastic demand forecasting using exponential smoothing method

Q3 Mathematics
Lalji Kumar, Kajal Sharma, U.K. Khedlekar
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引用次数: 0

Abstract

The research presents a novel approach to inventory modelling, emphasizing stochastic demand and dynamic pricing strategies for a seasonal sales framework. The methodology divides the sales season into intervals, each associated with distinct pricing strategies influenced by stochastic factors. The study employ exponential smoothing for demand forecasting, optimizing inventory replenishment and dynamic pricing strategies through developed algorithms. Notably, the study determine the optimal smoothing parameter for demand forecasting, balancing responsiveness to recent demand patterns with long-term stability. Proposed research achieves a comprehensive framework empowering businesses to enhance competitiveness and profitability by addressing challenges of stochastic demand and dynamic pricing. Dynamic pricing strategies outperformed classical strategies, allowing businesses to respond promptly to demand fluctuations and optimize profit margins during sales seasons. Incorporating stochastic demand models enabled organizations to implement safety stock and buffer inventory levels effectively, mitigating risks associated with uncertain demand patterns. Real-time data analysis was crucial for adjusting price dynamics and making effective management decisions, leading to improved financial performance. The iterative nature of dynamic pricing strategies emphasized the importance of continuous refinement to adapt to evolving market dynamics. This approach enables data-driven decisions, adaptation to market fluctuations, and improved inventory management despite unpredictable demand. Ultimately, this study provides valuable insights and methodologies applicable across industries for efficient and profitable inventory management.

使用指数平滑法进行自动相关随机需求预测的高效库存管理动态定价策略
研究提出了一种新颖的库存建模方法,强调季节性销售框架下的随机需求和动态定价策略。该方法将销售季节划分为若干区间,每个区间都有受随机因素影响的不同定价策略。研究采用指数平滑法进行需求预测,通过开发的算法优化库存补充和动态定价策略。值得注意的是,该研究确定了需求预测的最佳平滑参数,在对近期需求模式的响应与长期稳定性之间实现了平衡。所提出的研究实现了一个全面的框架,使企业能够通过应对随机需求和动态定价的挑战来提高竞争力和盈利能力。动态定价策略优于传统策略,使企业能够及时应对需求波动,并在销售旺季优化利润率。纳入随机需求模型使企业能够有效实施安全库存和缓冲库存水平,降低与不确定需求模式相关的风险。实时数据分析对于调整价格动态和做出有效的管理决策至关重要,从而提高财务业绩。动态定价策略的反复性强调了不断改进以适应不断变化的市场动态的重要性。这种方法能够以数据为导向做出决策,适应市场波动,并在需求不可预测的情况下改善库存管理。最终,本研究提供了适用于各行业的宝贵见解和方法,以实现高效、盈利的库存管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Results in Control and Optimization
Results in Control and Optimization Mathematics-Control and Optimization
CiteScore
3.00
自引率
0.00%
发文量
51
审稿时长
91 days
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