拥抱酒店管理的开放式创新:利用人工智能驱动的动态调度系统,优化复杂的资源,提高客人满意度

Q1 Economics, Econometrics and Finance Journal of Open Innovation: Technology, Market, and Complexity Pub Date : 2025-03-01 Epub Date: 2025-01-30 DOI:10.1016/j.joitmc.2025.100487
Rapeepan Pitakaso , Paulina Golinska-Dawson , Peerawat Luesak , Thanatkij Srichok , Surajet Khonjun
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引用次数: 0

摘要

酒店业日益努力解决运营效率和个性化客户服务之间的紧张关系。为此,本研究在开放式创新原则和复杂性理论的指导下,开发并评估了一个新的动态房间清洁和资源配置平台。具体来说,我们提出了人工多智能系统(AMIS),它采用基于启发式的优化来协调实时任务分配,并确保家政人员的公平工作量。我们在泰国乌汶拉差他尼省的一家酒店进行了试点实施,采用混合方法,将定量指标与定性反馈相结合。我们的研究结果表明,AMIS框架大大提高了运营绩效,平均房间周转时间减少了50% %以上,任务完成率超过了99% %。此外,该系统促进了工作量的平衡,减少了员工的工作时间,为可持续的劳动力管理提供了切实可行的途径。除了运营收益,该平台还通过实现按需定制服务提高了客人满意度,强调了其作为竞争优势来源的潜力。通过考察资源效率和服务个性化,本研究揭示了人工智能驱动的解决方案如何解决酒店运营中固有的复杂性。获得的见解超越了常规调度,展示了计算创新如何与管理策略仔细结合,可以培养适应性强、前瞻性的商业模式。最终,AMIS框架有助于讨论利用技术使服务交付和运营规划现代化,同时也强调了在动态服务行业中采用人工智能的更广泛影响。
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Embracing open innovation in hospitality management: Leveraging AI-driven dynamic scheduling systems for complex resource optimization and enhanced guest satisfaction
The hospitality sector increasingly grapples with the tension between operational efficiency and personalized guest services. In response, this study develops and evaluates a novel platform for dynamic room cleaning and resource allocation, guided by open innovation principles and complexity theory. Specifically, we propose the Artificial Multiple Intelligence System (AMIS), which employs heuristic-based optimization to coordinate real-time task assignments and ensure equitable workloads for housekeeping staff. We conducted a pilot implementation at a hotel in Ubon Ratchathani Province, Thailand, using a mixed-method approach that combined quantitative metrics with qualitative feedback. Our findings indicate that the AMIS framework substantially improves operational performance, as evidenced by more than a 50 % reduction in average room turnaround times and a task completion rate surpassing 99 %. Additionally, the system promotes balanced workloads and reduces employee working hours, suggesting practical avenues for sustainable workforce management. Beyond operational gains, the platform enhances guest satisfaction by enabling on-demand service customization, underscoring its potential as a source of competitive advantage. By examining both resource efficiency and service personalization, this study sheds light on how AI-driven solutions can address the complexities inherent in hospitality operations. The insights gained extend beyond routine scheduling, demonstrating how computational innovations, when carefully integrated with managerial strategies, can foster adaptable and forward-looking business models. Ultimately, the AMIS framework contributes to discussions on leveraging technology to modernize service delivery and operational planning, while also highlighting broader implications for AI adoption in dynamic service industries.
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来源期刊
Journal of Open Innovation: Technology, Market, and Complexity
Journal of Open Innovation: Technology, Market, and Complexity Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
11.00
自引率
0.00%
发文量
196
审稿时长
1 day
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