The savior of mountainous and hilly area work! Compact and lightweight, can be transported with a 750kg truck!
The "TT Type Riding Tea Leaf Picking Machine" is available in four types that match the width of the tea garden (tea row width of 1,500 to 1,800 mm). In addition to running, picking, and blowing air with a single engine, it is lightweight at 600 kg in the picking state, making it transportable by a 750 kg small truck. Moreover, the operation lever allows for smooth driving without stress, from forward and backward movement to turning and stopping. 【Features】 ■ Four types to match the width of the tea garden (tea row width of 1,500 to 1,800 mm) ■ Running, picking, and blowing air with a single engine ■ Ability to check the condition of the cutting blade and tea bag while driving ■ Exchange of full tea bags can be done without getting off the machine * We offer free sample tests. Please feel free to contact us! * For more details, please refer to the PDF document or feel free to contact us.
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【Other Features】 ■ The new distribution plate in the center of the cutting blade allows for storage in the tea bag without clogging. ■ The rear view is clear, making reverse operation easy. ■ The body is designed with a low center of gravity, considering use on slopes. ■ Excellent balance in all directions ensures safe and secure operation. *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.