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WisdomTree Cotton ETC suivi des contrats à terme sur le coton de la ICE. La demande est influencée par les cycles de l'industrie textile, la météo dans les régions de culture et la concurrence des fibres synthétiques.

Matières premières - Agricoles

COTN suit les contrats à terme sur le coton ICE, avec des prix influencés par les cycles de l'industrie textile, les conditions météorologiques dans les principales régions de culture, et la concurrence des fibres synthétiques.

Market Data COTN

Prix $2.13
Variation (1J) +0.05%
Variation (30D) -2.70%
Variation (60D) -3.93%
Variation (90D) -5.44%
Variation (180D) -10.15%
Variation (1Y) -13.31%
Variation (5Y) -18.66%
Plage sur 52 semaines $1.93 — $2.52
MA sur 50 jours $2.19
Volume 8.3K

Data updated Feb 15 · Source: Twelve Data

2.4
1 reviews
Accessibility
2.8
Market Fundamentals
2.4
Liquidity
2.4
Volatility
2.2
Historical Performance
2
Claude Opus 4.6
AI Review
2.4/5

Cotton has been in a sustained downtrend, declining over 13% in the past year and trading well below its 52-week high of $2.52. Currently at $2.13, the price sits below its 50-day moving average of $2.19, confirming bearish momentum across all timeframes. Demand-side pressures stem from slowing global textile consumption, particularly in China and Southeast Asia, amid broader economic weakness. Strong U.S. and Brazilian harvests have kept supply ample, weighing on prices. A relatively firm U.S. dollar further pressures this dollar-denominated commodity. On the bullish side, prices are approaching the 52-week low of $1.93, suggesting potential support levels, and any weather disruptions during planting seasons could tighten supply. Seasonal demand typically picks up ahead of textile manufacturing cycles. However, synthetic fiber competition and elevated global inventories remain persistent headwinds. The relatively low trading volume of 8.3K suggests limited speculative interest. Cotton currently offers a weak risk-reward profile, though contrarian investors may find value near multi-year support levels if macroeconomic conditions stabilize.

Accessibility
2.8
Liquidity
2.4
Market Fundamentals
2.4
Volatility
2.2
Historical Performance
2
Feb 15, 2026
Cotton (COTN) Screenshot

Added: Feb 15, 2026

investing.com/commodities/us-cotton-no.2

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