This is how scientists see the world!

dracularking 2010-07-15 03:54:10


因为这图很有意思,火龙果已经给出很多答案,但我想知道全部,慢慢查吧,上图先
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dracularking 2010-07-15
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知道点了

1.核聚变
2.麦克斯韦方程组, 用来描述空间某区域中的电磁场量(D、E、B、H)与电荷密度(ρ)、电流密度(J)之间的关系。四个方程分别回答了如下四个命题:电荷如何产生电场(高斯定理);磁单极子不存在(高斯磁定律);电流和变化的电场怎样产生磁场(麦克斯韦-安培定律),以及变化的磁场如何产生电场(法拉第电磁感应定律)
3.万有引力定律和爱因斯坦场公式
4.鸟儿飞翔 伯努利定理 水中是一小部分纳维尔-斯托克斯方程(Navier-Stokes equations)。这个方程描述作用于流体任意给定区域的动态力平衡,是史上最复杂难解的非线性偏微分方程之一,目前大量应用于各种物理过程的模拟。
5.入射宇宙射线 有Proton Neutron Pion Electron Muon Photon
6.傅里叶级数
7.呼吸作用 光合作用
8.右下角 分形学 分形图
商科程序员 2010-07-15
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再扫一下盲:核反应的方式有衰变,聚变,裂变,还可以通过粒子撞击。
做成产品也就是原子弹,氢弹和中子弹。
simaa0106 2010-07-15
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xiaohuanjie 2010-07-15
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dracularking 2010-07-15
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核聚变容易找到:
D + T → He(2中子)+ n
D + D → He(1中子)+ n
D + D → T + H
H:氢,D:氘,T:氚,n:中子

总反应式:4H ——> He + 2e + 2v + 2γ
H:氢 He:氦 e:正电子 v:中微子 γ :伽马光子


氢:hydrogen
氦:helium
氘:deuterium
氚:tritium
中子:neutron
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