Shower immersion + cleaning and bubbling for powerful performance! Made of all stainless steel and washable with water.
The "Leafy Vegetable Washing Machine" features an all-stainless steel frame and is capable of water washing. The immersion device ensures that everything from leafy vegetables to cut vegetables is securely submerged. Additionally, a large amount of air is sent into the washing tank by a blower, allowing for gentle bubbling cleaning that reaches every corner. The items that are taken out are rinsed with a finishing shower. 【Features】 ■ Dehydration is performed using a three-roller squeezing system. ■ The squeezing rollers can be easily adjusted for height and pressure. ■ The washing tank has a structure that allows for easy cleaning, reducing the burden on operators. ■ The water level adjuster is float-operated for easy handling. ■ An openable sink is equipped on the backside of the conveyor's rising section to keep the floor clean. *For more details, please refer to the PDF document or feel free to contact us.
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【Specifications】 ■Model: CWS-2000 ■Overall Length: 5,000 mm ■Overall Width: 1,600 mm ■Height: 2,200 mm ■Power ・Net: 0.4 kW ・Blower: 3.5 kW ・Scraper Feed: 0.1×2 kW ・Squeegee Roller: 0.1×3 kW ■Water Usage: 30 L/min ■Cleaning Tank: 2,000 L ■Reference Processing Capacity (based on fresh perilla leaves): 2,000 kg/h *For more details, please refer to the PDF document or feel free to contact us.
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For more details, please refer to the PDF document or feel free to contact us.
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Terada Manufacturing Co., Ltd. specializes in the manufacturing and sales of tea processing machines and riding harvesting machines, both in soft and hard technologies. In addition to tea-related equipment, we also design, manufacture, and sell various drying devices. Furthermore, we handle environmental measurement instruments such as fertilization management systems and pest occurrence prediction systems.