スカイラー・ティビッツ「物がひとりでに作られる未来」 | TEDのすゝめ ( TED 英語 スーパープレゼンテーション 洋楽 映画 スポーツ )

TEDのすゝめ ( TED 英語 スーパープレゼンテーション 洋楽 映画 スポーツ )

英語の勉強をしているみなさんに、おすすめのTEDトークを紹介します。
TEDのホームページには interactive transcript という便利な機能がついているので、直接、TEDのホームページで見ることをお勧めします。
あちこちへ脱線しますがご容赦ください~(^o^)v

Skylar Tibbits: Can we make things that make themselves?
TEDのホームページへはをクリックしてください。
直接ここで観ることもできます。

小さいことは気にすんなッ、主題と主張をつかもう!
NHKのEテレ「スーパープレゼンテーション」で8月6日(月)夜11時から再放送
→ http://www.nhk.or.jp/superpresentation/
スピードも語彙も難しくはないのですが、正直ちんぷんかんぷんです(笑)
TEDのホームページで日本語訳を読んでも何を言っているのかサッパリわからないので、「スパプレ」で解説を聴くのがベストでしょう
【話題】 自分で自分を組み立てる建物・機械
【時間】 6分5秒
【要約】
1.「モノづくり」の現在と未来
 ① 現在
  製造時間、複雑な構造、多種多様な部品
 ② 未来
  自然から学ぶ
  合理的、エコ、誤差が少ない、自己修復

2.自分で自分を組み立てる仕組みをつくる
 重要な4つの要素
  ① 組み立てる順序を解読
  ② 各部品にプログラムを入力できる
  ③ エネルギー源
  ④ 自己修正力

3.現在MITで進行中のプロジェクト
 ① MacroBot と DeciBot
  タンパク質を真似たロボット
  角度の大きさ・順序を決めることで、最終的な形をプログラムする

 ② NAND gate
(よく理解できなかったのですが、たぶん、こういうことだと思います。四面体3つで1つの単位部品になっていて、ユーザーからの指示と、既に組み立てられている別の部品が持っている情報の両方を合わせて計算して、全体の設計図を作成していく。これが生物のDNAのような意味を持ち、「複製」という概念につながる。単位部品ごとに全体の設計図を持っているので、一部にエラーが出ても修復が可能になる。)

 ③ Biased Chains
  鎖の一つ一つの部品は、一方向にだけ折れ曲がるようにできている
  折れる方向を決めておくことによって、振ると常に同じ形が復元できる

4.将来の可能性
 現在のプロジェクトは初期段階に過ぎない
 将来的にはいろいろな可能性がある
  ① 自分で自分を組み立てる機械・建物
  ② 新しいプログラミング
  ③ 新しい空間演算
  ④ 新しいデザイン

selfassemble02
【語彙】
self-assembling :放っておいても自分で勝手に組み上がる

replicating :複製

current :現在

complexity :複雑さ

efficient :効率的な

longevity :長生きする、長持ちする

decode :解読する

sequence :順序、連続

fold up :折りたたむ

reconfigure :再設定する、再構成する

actuation :作動

error correction redundancy :エラー修正のための余力、余裕、バックアップ

guarantee :保障する

scalable :拡張可能な

8-foot :2.4mの

embed :埋め込む

passive :受動的な、言うとおりに動く

tetrahedron :四面体

blueprint :設計図

self-replication :自己複製

biased :偏っている



【transcripts】

Today I'd like to show you the future of the way we make things. I believe that soon our buildings and machines will be self-assembling, replicating and repairing themselves. So I'm going to show you what I believe is the current state of manufacturing, and then compare that to some natural systems.


So in the current state of manufacturing, we have skyscrapers -- two and a half years [of assembly time], 500,000 to a million parts, fairly complex, new, exciting technologies in steel, concrete, glass. We have exciting machines that can take us into space -- five years [of assembly time], 2.5 million parts.


But on the other side, if you look at the natural systems, we have proteins that have two million types, can fold in 10,000 nanoseconds, or DNA with three billion base pairs we can replicate in roughly an hour. So there's all of this complexity in our natural systems, but they're extremely efficient, far more efficient than anything we can build, far more complex than anything we can build. They're far more efficient in terms of energy. They hardly ever make mistakes. And they can repair themselves for longevity.


So there's something super interesting about natural systems. And if we can translate that into our built environment, then there's some exciting potential for the way that we build things. And I think the key to that is self-assembly.


So if we want to utilize self-assembly in our physical environment, I think there's four key factors. The first is that we need to decode all of the complexity of what we want to build -- so our buildings and machines. And we need to decode that into simple sequences -- basically the DNA of how our buildings work. Then we need programmable parts that can take that sequence and use that to fold up, or reconfigure. We need some energy that's going to allow that to activate, allow our parts to be able to fold up from the program. And we need some type of error correction redundancy to guarantee that we have successfully built what we want.


So I'm going to show you a number of projects that my colleagues and I at MIT are working on to achieve this self-assembling future. The first two are the MacroBot and DeciBot. So these projects are large-scale reconfigurable robots -- 8 ft., 12 ft. long proteins. They're embedded with mechanical electrical devices, sensors. You decode what you want to fold up into, into a sequence of angles -- so negative 120, negative 120, 0, 0, 120, negative 120 -- something like that; so a sequence of angles, or turns, and you send that sequence through the string. Each unit takes its message -- so negative 120 -- it rotates to that, checks if it got there and then passes it to its neighbor.


So these are the brilliant scientists, engineers, designers that worked on this project. And I think it really brings to light: Is this really scalable? I mean, thousands of dollars, lots of man hours made to make this eight-foot robot. Can we really scale this up? Can we really embed robotics into every part? The next one questions that and looks at passive nature, or passively trying to have reconfiguration programmability. But it goes a step further, and it tries to have actual computation. It basically embeds the most fundamental building block of computing, the digital logic gate, directly into your parts.


So this is a NAND gate. You have one tetrahedron which is the gate that's going to do your computing, and you have two input tetrahedrons. One of them is the input from the user, as you're building your bricks. The other one is from the previous brick that was placed. And then it gives you an output in 3D space. So what this means is that the user can start plugging in what they want the bricks to do. It computes on what it was doing before and what you said you wanted it to do. And now it starts moving in three-dimensional space -- so up or down. So on the left-hand side, [1,1] input equals 0 output, which goes down. On the right-hand side, [0,0] input is a 1 output, which goes up. And so what that really means is that our structures now contain the blueprints of what we want to build.


So they have all of the information embedded in them of what was constructed. So that means that we can have some form of self-replication. In this case I call it self-guided replication, because your structure contains the exact blueprints. If you have errors, you can replace a part. All the local information is embedded to tell you how to fix it. So you could have something that climbs along and reads it and can output at one to one. It's directly embedded; there's no external instructions.


So the last project I'll show is called Biased Chains, and it's probably the most exciting example that we have right now of passive self-assembly systems. So it takes the reconfigurability and programmability and makes it a completely passive system. So basically you have a chain of elements. Each element is completely identical, and they're biased. So each chain, or each element, wants to turn right or left. So as you assemble the chain, you're basically programming it. You're telling each unit if it should turn right or left. So when you shake the chain, it then folds up into any configuration that you've programmed in -- so in this case, a spiral, or in this case, two cubes next to each other. So you can basically program any three-dimensional shape -- or one-dimensional, two-dimensional -- up into this chain completely passively.


So what does this tell us about the future? I think that it's telling us that there's new possibilities for self-assembly, replication, repair in our physical structures, our buildings, machines. There's new programmability in these parts. And from that you have new possibilities for computing. We'll have spatial computing. Imagine if our buildings, our bridges, machines, all of our bricks could actually compute. That's amazing parallel and distributed computing power, new design possibilities. So it's exciting potential for this. So I think these projects I've showed here are just a tiny step towards this future, if we implement these new technologies for a new self-assembling world.


Thank you.