This study analyzed external load variables in men' singles badminton matches, differentiating between set outcomes (winners vs. losers) and score gap (0-5, 6-10, and >10 points). Overall, winners exhibited lower external loads than losers in player load, explosive efforts, COD counts, accelerations, and covered distance. Notably, in narrow score gaps (0-5 points), winners performed more explosive efforts and CODs than losers, whereas in wider gaps (6–10 and >10 points), winners showed fewer of these metrics. Additionally, in > 10-point gaps, winners had lower player load, distance, and right-side CODs. These findings verified our hypothesis that winners would exhibit lower external loads than losers, though differences varied by score gap, with winners showing higher explosive efforts in narrow gap sets. Thus, in men's singles badminton, winners tend to control their opponents using tactics and techniques, leading to lower external loads overall, but in closely match, on-court movement may play a pivotal role in determining the outcome. A mean Player Load of 74.06 au per set reflects substantial whole-body exertion, consistent with Santiano et al. (2025) using markerless motion analysis in competitive badminton matches involving singles and doubles across sexes, reported player load values ranging from 67.1 to 94.9 AU per point, with higher loads in males than females but similar across disciplines. The high frequency of explosive efforts (mean = 55.85) and total jumps (mean = 21.58) underscore the sport's dynamic and powerful movements, such as lunges and smashes (Smith et al., 2023). Despite potential accuracy limitations associated with IMU-based distance estimation indoor settings (Al-Amri et al., 2018; Mackay et al., 2025), players covered an average distance of 703.6 m per set, which is noteworthy given the small playing area. However, as all measurements were taken under identical indoor conditions using the same devices, these limitations are unlikely to have biased the comparative results between winners and losers. Players performed an average of 62.35 CODs per set, with a noticeable dominance on left-side (mean = 45.77) compared to the right side (mean = 16.57). This imbalance may be influenced by opponents' strategic targeting of the backhand side. The high frequency of CODs, combined with repeated high-intensity accelerations (22.64 per set) and decelerations (15.44 per set), highlights that badminton is characterized by a movement profile dominated by rapid directional changes. These metrics offer more precise insights into mechanical stress compared to global indicators such as Player Load or covered distance (Mamon Jr et al., 2022). The use of IMUs in live match settings enables ecologically valid assessments (Iosa et al., 2016; Picerno et al., 2021), facilitating the development of training programs tailored to match-specific demands (Edel et al., 2023) and supporting load management strategies to mitigate the risk of non-contact injuries (Fields et al., 2021). The observation that winners often exhibit lower external loads aligns with the notion that superior technical skills, tactical intelligence, and movement efficiency contribute to competitive success (Shan, 2024). Winners are likely more proficient at anticipating opponents’ actions, controlling the pace of play, and executing precise shots. These abilities can force opponents into more physically demanding situations or provoke errors, thereby reducing the winners' need for extensive movement or high-intensity actions (Alcock and Cable, 2009). Such proficiency may result in fewer overall movements and reduce reliance on metabolically costly explosive efforts, particularly when players hold a clear advantage. A key finding is the significant interaction between set outcome and score gap, particularly in the 0-5 point category, where winners exhibited more explosive efforts and COD counts than losers. In evenly matched sets, winners appear to escalate efforts via explosive movements and aggressive tactics to gain advantages over similar opponents (Alvarez-Dacal et al., 2025; Valldecabres et al., 2020). Alternatively, they may use offensive strategies to force opponents into lower contact points, necessitating greater court coverage and directional changes (Gómez et al., 2020; Zhang et al., 2013). In contrast, losers fail to match this intensity or fatigue sooner (Abdullahi et al., 2019). In larger gaps (6–10 and >10 points), the pattern reversed, with winners showing lower explosive efforts and COD counts. These findings indicate context-dependent: efficiency in dominant sets versus high-intensity exertion in close ones (Valldecabres et al., 2020). Although interaction effects were significant for forward movements, left-side COD, and accelerations in the 0-5 gap, pairwise comparisons showed no differences. This apparent discrepancy may occur because a significant interaction indicates a noticeable overall difference in these metrics' response patterns between match outcomes and score gaps, often due to complex, non-parallel trends. Meanwhile, FDR-corrected pairwise comparisons remain non-significant because they lack the power to detect the smaller, specific mean differences in each individual condition after stringent multiple-testing correction. Notably, in the >10 point score gap, winners demonstrated significantly lower right-side COD counts, further supporting the notion of enhanced movement efficiency during more one-sided matches (Sheng et al., 2025). When winners secured sets with score gaps of 6–10 and >10 points, their external load metrics were significantly lower than those of losers. Several explanations are possible, including increased opponent errors under scoreboard pressure (Buszard et al., 2017), a shift toward more conservative strategies by the leading player (Valldecabres et al., 2020), or superior technical and tactical control enabling the winner to exert less physical effort (Sheng et al., 2025). Conversely, the lack of significant main effects for score gap across all metrics suggests that players may maintain a relatively stable baseline of movement intensity and workload per rally, irrespective of score margin (Santiano et al., 2025). Instead, the interaction between score gap and set outcome appears more influential in determining variations in external load (Valldecabres et al., 2020). No significant differences were observed in forward and backward movements, decelerations, and total jumps between winners and losers. This suggests that these elements may represent fundamental aspects of badminton performance, employed consistently by both groups. Alternatively, limitations of the IMU system and the predefined threshold (e.g., >2 m/s2 for decelerations) may have constrained the detection of subtler movement variations that differentiate performance (Mackay et al., 2025). The comparable number of total jumps between winners and losers suggests that key actions, such as jump smashes, are employed similarly regardless of set outcome, likely reflecting offensive intentions rather than reactive movements (Ramasamy et al., 2025). Likewise, the similarity in deceleration counts may reflect the shared necessity of shot retrieval, regardless of rally control. These findings align with previous research suggesting that lower external loads in winners may reflect superior movement efficiency, a performance characteristic observed in other individual sports (Navas et al., 2020; Vučkovic and James, 2010). However, this contrasts with findings from team sports like soccer, where winning team often cover greater total distances and perform more high-intensity running, attributable to maintaining ball possession, implementing high-pressing strategies, and executing rapid transitions (Akenhead and Nassis, 2016; Chmura et al., 2018). In contrast, badminton success hinges on rapid multi-directional footwork, frequent short-distance changes of direction, explosive jumps, and precise racket skills, emphasizing movement efficiency and tactical execution rather than sustained high-speed running. These differences underscore the sport-specific nature of physical performance demands, emphasizing that in racket sports like badminton, technical precision, strategic execution, and movement efficiency are prioritized to minimize energy expenditure and maximize opponent disruption, in contrast to the emphasis on extensive locomotor activity in field-based team sports. The use of IMUs to quantify player load and movement patterns in court-based sports has become increasingly prevalent (Al-Amri et al., 2018; Iosa et al., 2016; Picerno et al., 2021). Studies in other racket sports, such as tennis, have similarly employed IMUs to analyze specific movements and overall external load (Rigozzi et al., 2023). Although direct comparisons of absolute values are challenging due to variations in sensor technology, data processing algorithms, player levels, and sport-specific demands, our findings regarding the intermittent high-intensity nature of badminton are broadly consistent with existing knowledge of modern racket sports (Cádiz Gallardo et al., 2023). By quantifying CODs and explosive efforts, this study complements prior badminton research, which has predominantly focused on physiological responses, such as heart rate (Alcock and Cable, 2009) or biomechanical analysis of specific strokes and movements, including lunges (Lam et al., 2017) and landings (Kaldau et al., 2022; Wen et al., 2025) by offering a whole-match perspective on locomotor and inertial loads. The finding that winners in closely contested matches exhibit higher physical output represents a novel contribution that warrants further investigation in badminton and other net or court-based sports. This study is subject to several limitations. First, the sample was limited to highly trained male singles players, which restricts the generalizability of the findings to female athletes, other competition formats, or different skill levels. Second, only a single IMU placed on the upper back was used, which may not fully capture segmental loading, particularly in the upper and lower limbs. Future studies could use multiple IMUs on key body segments (wrists, ankles, lower back) to better capture upper- and lower-limb loading. Finally, the inclusion of internal load metrics (e.g., heart rate) and technical-tactical data (e.g., hitting load) would have provided a more comprehensive understanding of the physical demands encountered during play. |